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GPy/core/gp.py
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150
GPy/core/gp.py
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# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
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# Licensed under the BSD 3-clause license (see LICENSE.txt)
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import numpy as np
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from scipy import linalg
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import pylab as pb
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from .. import kern
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from ..util.linalg import pdinv, mdot, tdot
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#from ..util.plot import gpplot, Tango
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from ..likelihoods import EP
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from gp_base import GPBase
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class GP(GPBase):
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"""
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Gaussian Process model for regression and EP
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:param X: input observations
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:param kernel: a GPy kernel, defaults to rbf+white
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:parm likelihood: a GPy likelihood
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:param normalize_X: whether to normalize the input data before computing (predictions will be in original scales)
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:type normalize_X: False|True
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:rtype: model object
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:param epsilon_ep: convergence criterion for the Expectation Propagation algorithm, defaults to 0.1
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:param powerep: power-EP parameters [$\eta$,$\delta$], defaults to [1.,1.]
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:type powerep: list
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.. Note:: Multiple independent outputs are allowed using columns of Y
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"""
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def __init__(self, X, likelihood, kernel, normalize_X=False):
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GPBase.__init__(self, X, likelihood, kernel, normalize_X=normalize_X)
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self._set_params(self._get_params())
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def _set_params(self, p):
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self.kern._set_params_transformed(p[:self.kern.Nparam_transformed()])
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self.likelihood._set_params(p[self.kern.Nparam_transformed():])
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self.K = self.kern.K(self.X)
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self.K += self.likelihood.covariance_matrix
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self.Ki, self.L, self.Li, self.K_logdet = pdinv(self.K)
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# the gradient of the likelihood wrt the covariance matrix
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if self.likelihood.YYT is None:
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#alpha = np.dot(self.Ki, self.likelihood.Y)
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alpha,_ = linalg.lapack.flapack.dpotrs(self.L, self.likelihood.Y,lower=1)
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self.dL_dK = 0.5 * (tdot(alpha) - self.input_dim * self.Ki)
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else:
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#tmp = mdot(self.Ki, self.likelihood.YYT, self.Ki)
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tmp, _ = linalg.lapack.flapack.dpotrs(self.L, np.asfortranarray(self.likelihood.YYT), lower=1)
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tmp, _ = linalg.lapack.flapack.dpotrs(self.L, np.asfortranarray(tmp.T), lower=1)
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self.dL_dK = 0.5 * (tmp - self.input_dim * self.Ki)
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def _get_params(self):
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return np.hstack((self.kern._get_params_transformed(), self.likelihood._get_params()))
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def _get_param_names(self):
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return self.kern._get_param_names_transformed() + self.likelihood._get_param_names()
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def update_likelihood_approximation(self):
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"""
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Approximates a non-gaussian likelihood using Expectation Propagation
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For a Gaussian likelihood, no iteration is required:
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this function does nothing
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"""
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self.likelihood.fit_full(self.kern.K(self.X))
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self._set_params(self._get_params()) # update the GP
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def _model_fit_term(self):
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"""
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Computes the model fit using YYT if it's available
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"""
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if self.likelihood.YYT is None:
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tmp, _ = linalg.lapack.flapack.dtrtrs(self.L, np.asfortranarray(self.likelihood.Y), lower=1)
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return -0.5 * np.sum(np.square(tmp))
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#return -0.5 * np.sum(np.square(np.dot(self.Li, self.likelihood.Y)))
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else:
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return -0.5 * np.sum(np.multiply(self.Ki, self.likelihood.YYT))
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def log_likelihood(self):
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"""
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The log marginal likelihood of the GP.
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For an EP model, can be written as the log likelihood of a regression
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model for a new variable Y* = v_tilde/tau_tilde, with a covariance
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matrix K* = K + diag(1./tau_tilde) plus a normalization term.
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"""
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return -0.5 * self.input_dim * self.K_logdet + self._model_fit_term() + self.likelihood.Z
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def _log_likelihood_gradients(self):
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"""
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The gradient of all parameters.
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Note, we use the chain rule: dL_dtheta = dL_dK * d_K_dtheta
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"""
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return np.hstack((self.kern.dK_dtheta(dL_dK=self.dL_dK, X=self.X), self.likelihood._gradients(partial=np.diag(self.dL_dK))))
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def _raw_predict(self, _Xnew, which_parts='all', full_cov=False,stop=False):
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"""
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Internal helper function for making predictions, does not account
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for normalization or likelihood
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"""
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Kx = self.kern.K(_Xnew,self.X,which_parts=which_parts).T
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#KiKx = np.dot(self.Ki, Kx)
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KiKx, _ = linalg.lapack.flapack.dpotrs(self.L, np.asfortranarray(Kx), lower=1)
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mu = np.dot(KiKx.T, self.likelihood.Y)
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if full_cov:
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Kxx = self.kern.K(_Xnew, which_parts=which_parts)
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var = Kxx - np.dot(KiKx.T, Kx)
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else:
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Kxx = self.kern.Kdiag(_Xnew, which_parts=which_parts)
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var = Kxx - np.sum(np.multiply(KiKx, Kx), 0)
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var = var[:, None]
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if stop:
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debug_this # @UndefinedVariable
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return mu, var
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def predict(self, Xnew, which_parts='all', full_cov=False):
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"""
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Predict the function(s) at the new point(s) Xnew.
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Arguments
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---------
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:param Xnew: The points at which to make a prediction
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:type Xnew: np.ndarray, Nnew x self.input_dim
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:param which_parts: specifies which outputs kernel(s) to use in prediction
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:type which_parts: ('all', list of bools)
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:param full_cov: whether to return the folll covariance matrix, or just the diagonal
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:type full_cov: bool
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:rtype: posterior mean, a Numpy array, Nnew x self.input_dim
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:rtype: posterior variance, a Numpy array, Nnew x 1 if full_cov=False, Nnew x Nnew otherwise
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:rtype: lower and upper boundaries of the 95% confidence intervals, Numpy arrays, Nnew x self.input_dim
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If full_cov and self.input_dim > 1, the return shape of var is Nnew x Nnew x self.input_dim. If self.input_dim == 1, the return shape is Nnew x Nnew.
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This is to allow for different normalizations of the output dimensions.
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"""
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# normalize X values
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Xnew = (Xnew.copy() - self._Xmean) / self._Xstd
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mu, var = self._raw_predict(Xnew, full_cov=full_cov, which_parts=which_parts)
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# now push through likelihood
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mean, var, _025pm, _975pm = self.likelihood.predictive_values(mu, var, full_cov)
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return mean, var, _025pm, _975pm
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304
GPy/core/sparse_gp.py
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GPy/core/sparse_gp.py
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# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
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# Licensed under the BSD 3-clause license (see LICENSE.txt)
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import numpy as np
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import pylab as pb
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from ..util.linalg import mdot, jitchol, tdot, symmetrify, backsub_both_sides, chol_inv
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from scipy import linalg
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from ..likelihoods import Gaussian
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from gp_base import GPBase
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class SparseGP(GPBase):
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"""
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Variational sparse GP model
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:param X: inputs
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:type X: np.ndarray (N x input_dim)
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:param likelihood: a likelihood instance, containing the observed data
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:type likelihood: GPy.likelihood.(Gaussian | EP | Laplace)
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:param kernel : the kernel (covariance function). See link kernels
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:type kernel: a GPy.kern.kern instance
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:param X_variance: The uncertainty in the measurements of X (Gaussian variance)
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:type X_variance: np.ndarray (N x input_dim) | None
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:param Z: inducing inputs (optional, see note)
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:type Z: np.ndarray (num_inducing x input_dim) | None
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:param num_inducing : Number of inducing points (optional, default 10. Ignored if Z is not None)
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:type num_inducing: int
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:param normalize_(X|Y) : whether to normalize the data before computing (predictions will be in original scales)
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:type normalize_(X|Y): bool
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"""
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def __init__(self, X, likelihood, kernel, Z, X_variance=None, normalize_X=False):
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GPBase.__init__(self, X, likelihood, kernel, normalize_X=normalize_X)
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self.Z = Z
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self.num_inducing = Z.shape[0]
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self.likelihood = likelihood
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if X_variance is None:
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self.has_uncertain_inputs = False
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else:
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assert X_variance.shape == X.shape
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self.has_uncertain_inputs = True
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self.X_variance = X_variance
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if normalize_X:
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self.Z = (self.Z.copy() - self._Xmean) / self._Xstd
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# normalize X uncertainty also
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if self.has_uncertain_inputs:
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self.X_variance /= np.square(self._Xstd)
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def _compute_kernel_matrices(self):
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# kernel computations, using BGPLVM notation
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self.Kmm = self.kern.K(self.Z)
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if self.has_uncertain_inputs:
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self.psi0 = self.kern.psi0(self.Z, self.X, self.X_variance)
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self.psi1 = self.kern.psi1(self.Z, self.X, self.X_variance).T
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self.psi2 = self.kern.psi2(self.Z, self.X, self.X_variance)
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else:
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self.psi0 = self.kern.Kdiag(self.X)
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self.psi1 = self.kern.K(self.Z, self.X)
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self.psi2 = None
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def _computations(self):
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# factor Kmm
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self.Lm = jitchol(self.Kmm)
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# The rather complex computations of self.A
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if self.has_uncertain_inputs:
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if self.likelihood.is_heteroscedastic:
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psi2_beta = (self.psi2 * (self.likelihood.precision.flatten().reshape(self.N, 1, 1))).sum(0)
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else:
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psi2_beta = self.psi2.sum(0) * self.likelihood.precision
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evals, evecs = linalg.eigh(psi2_beta)
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clipped_evals = np.clip(evals, 0., 1e6) # TODO: make clipping configurable
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tmp = evecs * np.sqrt(clipped_evals)
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else:
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if self.likelihood.is_heteroscedastic:
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tmp = self.psi1 * (np.sqrt(self.likelihood.precision.flatten().reshape(1, self.N)))
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else:
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tmp = self.psi1 * (np.sqrt(self.likelihood.precision))
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tmp, _ = linalg.lapack.flapack.dtrtrs(self.Lm, np.asfortranarray(tmp), lower=1)
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self.A = tdot(tmp)
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# factor B
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self.B = np.eye(self.num_inducing) + self.A
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self.LB = jitchol(self.B)
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# TODO: make a switch for either first compute psi1V, or VV.T
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self.psi1V = np.dot(self.psi1, self.likelihood.V)
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# back substutue C into psi1V
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tmp, info1 = linalg.lapack.flapack.dtrtrs(self.Lm, np.asfortranarray(self.psi1V), lower=1, trans=0)
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self._LBi_Lmi_psi1V, _ = linalg.lapack.flapack.dtrtrs(self.LB, np.asfortranarray(tmp), lower=1, trans=0)
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tmp, info2 = linalg.lapack.flapack.dpotrs(self.LB, tmp, lower=1)
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self.Cpsi1V, info3 = linalg.lapack.flapack.dtrtrs(self.Lm, tmp, lower=1, trans=1)
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# Compute dL_dKmm
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tmp = tdot(self._LBi_Lmi_psi1V)
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self.DBi_plus_BiPBi = backsub_both_sides(self.LB, self.input_dim * np.eye(self.num_inducing) + tmp)
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tmp = -0.5 * self.DBi_plus_BiPBi
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tmp += -0.5 * self.B * self.input_dim
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tmp += self.input_dim * np.eye(self.num_inducing)
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self.dL_dKmm = backsub_both_sides(self.Lm, tmp)
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# Compute dL_dpsi # FIXME: this is untested for the heterscedastic + uncertain inputs case
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self.dL_dpsi0 = -0.5 * self.input_dim * (self.likelihood.precision * np.ones([self.N, 1])).flatten()
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self.dL_dpsi1 = np.dot(self.Cpsi1V, self.likelihood.V.T)
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dL_dpsi2_beta = 0.5 * backsub_both_sides(self.Lm, self.input_dim * np.eye(self.num_inducing) - self.DBi_plus_BiPBi)
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if self.likelihood.is_heteroscedastic:
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if self.has_uncertain_inputs:
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self.dL_dpsi2 = self.likelihood.precision.flatten()[:, None, None] * dL_dpsi2_beta[None, :, :]
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else:
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self.dL_dpsi1 += 2.*np.dot(dL_dpsi2_beta, self.psi1 * self.likelihood.precision.reshape(1, self.N))
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self.dL_dpsi2 = None
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else:
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dL_dpsi2 = self.likelihood.precision * dL_dpsi2_beta
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if self.has_uncertain_inputs:
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# repeat for each of the N psi_2 matrices
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self.dL_dpsi2 = np.repeat(dL_dpsi2[None, :, :], self.N, axis=0)
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else:
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# subsume back into psi1 (==Kmn)
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self.dL_dpsi1 += 2.*np.dot(dL_dpsi2, self.psi1)
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self.dL_dpsi2 = None
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# the partial derivative vector for the likelihood
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if self.likelihood.Nparams == 0:
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# save computation here.
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self.partial_for_likelihood = None
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elif self.likelihood.is_heteroscedastic:
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raise NotImplementedError, "heteroscedatic derivates not implemented"
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else:
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# likelihood is not heterscedatic
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self.partial_for_likelihood = -0.5 * self.N * self.input_dim * self.likelihood.precision + 0.5 * self.likelihood.trYYT * self.likelihood.precision ** 2
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self.partial_for_likelihood += 0.5 * self.input_dim * (self.psi0.sum() * self.likelihood.precision ** 2 - np.trace(self.A) * self.likelihood.precision)
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self.partial_for_likelihood += self.likelihood.precision * (0.5 * np.sum(self.A * self.DBi_plus_BiPBi) - np.sum(np.square(self._LBi_Lmi_psi1V)))
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def log_likelihood(self):
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""" Compute the (lower bound on the) log marginal likelihood """
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if self.likelihood.is_heteroscedastic:
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A = -0.5 * self.N * self.input_dim * np.log(2.*np.pi) + 0.5 * np.sum(np.log(self.likelihood.precision)) - 0.5 * np.sum(self.likelihood.V * self.likelihood.Y)
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B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision.flatten() * self.psi0) - np.trace(self.A))
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else:
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A = -0.5 * self.N * self.input_dim * (np.log(2.*np.pi) - np.log(self.likelihood.precision)) - 0.5 * self.likelihood.precision * self.likelihood.trYYT
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B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision * self.psi0) - np.trace(self.A))
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C = -self.input_dim * (np.sum(np.log(np.diag(self.LB)))) # + 0.5 * self.num_inducing * np.log(sf2))
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D = 0.5 * np.sum(np.square(self._LBi_Lmi_psi1V))
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return A + B + C + D + self.likelihood.Z
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def _set_params(self, p):
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||||||
|
self.Z = p[:self.num_inducing * self.input_dim].reshape(self.num_inducing, self.input_dim)
|
||||||
|
self.kern._set_params(p[self.Z.size:self.Z.size + self.kern.Nparam])
|
||||||
|
self.likelihood._set_params(p[self.Z.size + self.kern.Nparam:])
|
||||||
|
self._compute_kernel_matrices()
|
||||||
|
self._computations()
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
return np.hstack([self.Z.flatten(), self.kern._get_params_transformed(), self.likelihood._get_params()])
|
||||||
|
|
||||||
|
def _get_param_names(self):
|
||||||
|
return sum([['iip_%i_%i' % (i, j) for j in range(self.Z.shape[1])] for i in range(self.Z.shape[0])],[])\
|
||||||
|
+ self.kern._get_param_names_transformed() + self.likelihood._get_param_names()
|
||||||
|
|
||||||
|
def update_likelihood_approximation(self):
|
||||||
|
"""
|
||||||
|
Approximates a non-gaussian likelihood using Expectation Propagation
|
||||||
|
|
||||||
|
For a Gaussian likelihood, no iteration is required:
|
||||||
|
this function does nothing
|
||||||
|
"""
|
||||||
|
if not isinstance(self.likelihood, Gaussian): # Updates not needed for Gaussian likelihood
|
||||||
|
self.likelihood.restart() # TODO check consistency with pseudo_EP
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
Lmi = chol_inv(self.Lm)
|
||||||
|
Kmmi = tdot(Lmi.T)
|
||||||
|
diag_tr_psi2Kmmi = np.array([np.trace(psi2_Kmmi) for psi2_Kmmi in np.dot(self.psi2, Kmmi)])
|
||||||
|
|
||||||
|
self.likelihood.fit_FITC(self.Kmm, self.psi1, diag_tr_psi2Kmmi) # This uses the fit_FITC code, but does not perfomr a FITC-EP.#TODO solve potential confusion
|
||||||
|
# raise NotImplementedError, "EP approximation not implemented for uncertain inputs"
|
||||||
|
else:
|
||||||
|
self.likelihood.fit_DTC(self.Kmm, self.psi1)
|
||||||
|
# self.likelihood.fit_FITC(self.Kmm,self.psi1,self.psi0)
|
||||||
|
self._set_params(self._get_params()) # update the GP
|
||||||
|
|
||||||
|
def _log_likelihood_gradients(self):
|
||||||
|
return np.hstack((self.dL_dZ().flatten(), self.dL_dtheta(), self.likelihood._gradients(partial=self.partial_for_likelihood)))
|
||||||
|
|
||||||
|
def dL_dtheta(self):
|
||||||
|
"""
|
||||||
|
Compute and return the derivative of the log marginal likelihood wrt the parameters of the kernel
|
||||||
|
"""
|
||||||
|
dL_dtheta = self.kern.dK_dtheta(self.dL_dKmm, self.Z)
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
dL_dtheta += self.kern.dpsi0_dtheta(self.dL_dpsi0, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dtheta += self.kern.dpsi1_dtheta(self.dL_dpsi1.T, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dtheta += self.kern.dpsi2_dtheta(self.dL_dpsi2, self.Z, self.X, self.X_variance)
|
||||||
|
else:
|
||||||
|
dL_dtheta += self.kern.dK_dtheta(self.dL_dpsi1, self.Z, self.X)
|
||||||
|
dL_dtheta += self.kern.dKdiag_dtheta(self.dL_dpsi0, self.X)
|
||||||
|
|
||||||
|
return dL_dtheta
|
||||||
|
|
||||||
|
def dL_dZ(self):
|
||||||
|
"""
|
||||||
|
The derivative of the bound wrt the inducing inputs Z
|
||||||
|
"""
|
||||||
|
dL_dZ = 2.*self.kern.dK_dX(self.dL_dKmm, self.Z) # factor of two becase of vertical and horizontal 'stripes' in dKmm_dZ
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
dL_dZ += self.kern.dpsi1_dZ(self.dL_dpsi1, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dZ += self.kern.dpsi2_dZ(self.dL_dpsi2, self.Z, self.X, self.X_variance)
|
||||||
|
else:
|
||||||
|
dL_dZ += self.kern.dK_dX(self.dL_dpsi1, self.Z, self.X)
|
||||||
|
return dL_dZ
|
||||||
|
|
||||||
|
def _raw_predict(self, Xnew, X_variance_new=None, which_parts='all', full_cov=False):
|
||||||
|
"""Internal helper function for making predictions, does not account for normalization"""
|
||||||
|
|
||||||
|
Bi, _ = linalg.lapack.flapack.dpotri(self.LB, lower=0) # WTH? this lower switch should be 1, but that doesn't work!
|
||||||
|
symmetrify(Bi)
|
||||||
|
Kmmi_LmiBLmi = backsub_both_sides(self.Lm, np.eye(self.num_inducing) - Bi)
|
||||||
|
|
||||||
|
if X_variance_new is None:
|
||||||
|
Kx = self.kern.K(self.Z, Xnew, which_parts=which_parts)
|
||||||
|
mu = np.dot(Kx.T, self.Cpsi1V)
|
||||||
|
if full_cov:
|
||||||
|
Kxx = self.kern.K(Xnew, which_parts=which_parts)
|
||||||
|
var = Kxx - mdot(Kx.T, Kmmi_LmiBLmi, Kx) # NOTE this won't work for plotting
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.Kdiag(Xnew, which_parts=which_parts)
|
||||||
|
var = Kxx - np.sum(Kx * np.dot(Kmmi_LmiBLmi, Kx), 0)
|
||||||
|
else:
|
||||||
|
# assert which_parts=='all', "swithching out parts of variational kernels is not implemented"
|
||||||
|
Kx = self.kern.psi1(self.Z, Xnew, X_variance_new) # , which_parts=which_parts) TODO: which_parts
|
||||||
|
mu = np.dot(Kx, self.Cpsi1V)
|
||||||
|
if full_cov:
|
||||||
|
raise NotImplementedError, "TODO"
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.psi0(self.Z, Xnew, X_variance_new)
|
||||||
|
psi2 = self.kern.psi2(self.Z, Xnew, X_variance_new)
|
||||||
|
var = Kxx - np.sum(np.sum(psi2 * Kmmi_LmiBLmi[None, :, :], 1), 1)
|
||||||
|
|
||||||
|
return mu, var[:, None]
|
||||||
|
|
||||||
|
def predict(self, Xnew, X_variance_new=None, which_parts='all', full_cov=False):
|
||||||
|
"""
|
||||||
|
Predict the function(s) at the new point(s) Xnew.
|
||||||
|
|
||||||
|
Arguments
|
||||||
|
---------
|
||||||
|
:param Xnew: The points at which to make a prediction
|
||||||
|
:type Xnew: np.ndarray, Nnew x self.input_dim
|
||||||
|
:param X_variance_new: The uncertainty in the prediction points
|
||||||
|
:type X_variance_new: np.ndarray, Nnew x self.input_dim
|
||||||
|
:param which_parts: specifies which outputs kernel(s) to use in prediction
|
||||||
|
:type which_parts: ('all', list of bools)
|
||||||
|
:param full_cov: whether to return the folll covariance matrix, or just the diagonal
|
||||||
|
:type full_cov: bool
|
||||||
|
:rtype: posterior mean, a Numpy array, Nnew x self.input_dim
|
||||||
|
:rtype: posterior variance, a Numpy array, Nnew x 1 if full_cov=False, Nnew x Nnew otherwise
|
||||||
|
:rtype: lower and upper boundaries of the 95% confidence intervals, Numpy arrays, Nnew x self.input_dim
|
||||||
|
|
||||||
|
|
||||||
|
If full_cov and self.input_dim > 1, the return shape of var is Nnew x Nnew x self.input_dim. If self.input_dim == 1, the return shape is Nnew x Nnew.
|
||||||
|
This is to allow for different normalizations of the output dimensions.
|
||||||
|
|
||||||
|
"""
|
||||||
|
# normalize X values
|
||||||
|
Xnew = (Xnew.copy() - self._Xmean) / self._Xstd
|
||||||
|
if X_variance_new is not None:
|
||||||
|
X_variance_new = X_variance_new / self._Xstd ** 2
|
||||||
|
|
||||||
|
# here's the actual prediction by the GP model
|
||||||
|
mu, var = self._raw_predict(Xnew, X_variance_new, full_cov=full_cov, which_parts=which_parts)
|
||||||
|
|
||||||
|
# now push through likelihood
|
||||||
|
mean, var, _025pm, _975pm = self.likelihood.predictive_values(mu, var, full_cov)
|
||||||
|
|
||||||
|
return mean, var, _025pm, _975pm
|
||||||
|
|
||||||
|
def plot(self, samples=0, plot_limits=None, which_data='all', which_parts='all', resolution=None, levels=20, fignum=None, ax=None):
|
||||||
|
if ax is None:
|
||||||
|
fig = pb.figure(num=fignum)
|
||||||
|
ax = fig.add_subplot(111)
|
||||||
|
|
||||||
|
if which_data is 'all':
|
||||||
|
which_data = slice(None)
|
||||||
|
|
||||||
|
GPBase.plot(self, samples=0, plot_limits=None, which_data='all', which_parts='all', resolution=None, levels=20, ax=ax)
|
||||||
|
if self.X.shape[1] == 1:
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
Xu = self.X * self._Xstd + self._Xmean # NOTE self.X are the normalized values now
|
||||||
|
ax.errorbar(Xu[which_data, 0], self.likelihood.data[which_data, 0],
|
||||||
|
xerr=2 * np.sqrt(self.X_variance[which_data, 0]),
|
||||||
|
ecolor='k', fmt=None, elinewidth=.5, alpha=.5)
|
||||||
|
Zu = self.Z * self._Xstd + self._Xmean
|
||||||
|
ax.plot(Zu, np.zeros_like(Zu) + ax.get_ylim()[0], 'r|', mew=1.5, markersize=12)
|
||||||
|
|
||||||
|
elif self.X.shape[1] == 2:
|
||||||
|
Zu = self.Z * self._Xstd + self._Xmean
|
||||||
|
ax.plot(Zu[:, 0], Zu[:, 1], 'wo')
|
||||||
169
GPy/inference/scg.py
Normal file
169
GPy/inference/scg.py
Normal file
|
|
@ -0,0 +1,169 @@
|
||||||
|
# Copyright I. Nabney, N.Lawrence and James Hensman (1996 - 2012)
|
||||||
|
|
||||||
|
# Scaled Conjuagte Gradients, originally in Matlab as part of the Netlab toolbox by I. Nabney, converted to python N. Lawrence and given a pythonic interface by James Hensman
|
||||||
|
|
||||||
|
# THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT
|
||||||
|
# HOLDERS AND CONTRIBUTORS "AS IS" AND ANY
|
||||||
|
# EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT
|
||||||
|
# NOT LIMITED TO, THE IMPLIED WARRANTIES OF
|
||||||
|
# MERCHANTABILITY AND FITNESS FOR A PARTICULAR
|
||||||
|
# PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE
|
||||||
|
# REGENTS OR CONTRIBUTORS BE LIABLE FOR ANY
|
||||||
|
# DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
|
||||||
|
# EXEMPLARY, OR CONSEQUENTIAL DAMAGES
|
||||||
|
# (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT
|
||||||
|
# OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE,
|
||||||
|
# DATA, OR PROFITS; OR BUSINESS INTERRUPTION)
|
||||||
|
# HOWEVER CAUSED AND ON ANY THEORY OF
|
||||||
|
# LIABILITY, WHETHER IN CONTRACT, STRICT
|
||||||
|
# LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR
|
||||||
|
# OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
|
||||||
|
# OF THIS SOFTWARE, EVEN IF ADVISED OF THE
|
||||||
|
# POSSIBILITY OF SUCH DAMAGE.
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
import sys
|
||||||
|
|
||||||
|
|
||||||
|
def print_out(len_maxiters, display, fnow, current_grad, beta, iteration):
|
||||||
|
if display:
|
||||||
|
print '\r',
|
||||||
|
print '{0:>0{mi}g} {1:> 12e} {2:> 12e} {3:> 12e}'.format(iteration, float(fnow), float(beta), float(current_grad), mi=len_maxiters), # print 'Iteration:', iteration, ' Objective:', fnow, ' Scale:', beta, '\r',
|
||||||
|
sys.stdout.flush()
|
||||||
|
|
||||||
|
def SCG(f, gradf, x, optargs=(), maxiters=500, max_f_eval=500, display=True, xtol=None, ftol=None, gtol=None):
|
||||||
|
"""
|
||||||
|
Optimisation through Scaled Conjugate Gradients (SCG)
|
||||||
|
|
||||||
|
f: the objective function
|
||||||
|
gradf : the gradient function (should return a 1D np.ndarray)
|
||||||
|
x : the initial condition
|
||||||
|
|
||||||
|
Returns
|
||||||
|
x the optimal value for x
|
||||||
|
flog : a list of all the objective values
|
||||||
|
function_eval number of fn evaluations
|
||||||
|
status: string describing convergence status
|
||||||
|
"""
|
||||||
|
if xtol is None:
|
||||||
|
xtol = 1e-6
|
||||||
|
if ftol is None:
|
||||||
|
ftol = 1e-6
|
||||||
|
if gtol is None:
|
||||||
|
gtol = 1e-5
|
||||||
|
sigma0 = 1.0e-8
|
||||||
|
fold = f(x, *optargs) # Initial function value.
|
||||||
|
function_eval = 1
|
||||||
|
fnow = fold
|
||||||
|
gradnew = gradf(x, *optargs) # Initial gradient.
|
||||||
|
current_grad = np.dot(gradnew, gradnew)
|
||||||
|
gradold = gradnew.copy()
|
||||||
|
d = -gradnew # Initial search direction.
|
||||||
|
success = True # Force calculation of directional derivs.
|
||||||
|
nsuccess = 0 # nsuccess counts number of successes.
|
||||||
|
beta = 1.0 # Initial scale parameter.
|
||||||
|
betamin = 1.0e-60 # Lower bound on scale.
|
||||||
|
betamax = 1.0e100 # Upper bound on scale.
|
||||||
|
status = "Not converged"
|
||||||
|
|
||||||
|
flog = [fold]
|
||||||
|
|
||||||
|
iteration = 0
|
||||||
|
|
||||||
|
len_maxiters = len(str(maxiters))
|
||||||
|
if display:
|
||||||
|
print ' {0:{mi}s} {1:11s} {2:11s} {3:11s}'.format("I", "F", "Scale", "|g|", mi=len_maxiters)
|
||||||
|
|
||||||
|
# Main optimization loop.
|
||||||
|
while iteration < maxiters:
|
||||||
|
|
||||||
|
# Calculate first and second directional derivatives.
|
||||||
|
if success:
|
||||||
|
mu = np.dot(d, gradnew)
|
||||||
|
if mu >= 0:
|
||||||
|
d = -gradnew
|
||||||
|
mu = np.dot(d, gradnew)
|
||||||
|
kappa = np.dot(d, d)
|
||||||
|
sigma = sigma0 / np.sqrt(kappa)
|
||||||
|
xplus = x + sigma * d
|
||||||
|
gplus = gradf(xplus, *optargs)
|
||||||
|
theta = np.dot(d, (gplus - gradnew)) / sigma
|
||||||
|
|
||||||
|
# Increase effective curvature and evaluate step size alpha.
|
||||||
|
delta = theta + beta * kappa
|
||||||
|
if delta <= 0:
|
||||||
|
delta = beta * kappa
|
||||||
|
beta = beta - theta / kappa
|
||||||
|
|
||||||
|
alpha = -mu / delta
|
||||||
|
|
||||||
|
# Calculate the comparison ratio.
|
||||||
|
xnew = x + alpha * d
|
||||||
|
fnew = f(xnew, *optargs)
|
||||||
|
function_eval += 1
|
||||||
|
|
||||||
|
if function_eval >= max_f_eval:
|
||||||
|
status = "Maximum number of function evaluations exceeded"
|
||||||
|
break
|
||||||
|
# return x, flog, function_eval, status
|
||||||
|
|
||||||
|
Delta = 2.*(fnew - fold) / (alpha * mu)
|
||||||
|
if Delta >= 0.:
|
||||||
|
success = True
|
||||||
|
nsuccess += 1
|
||||||
|
x = xnew
|
||||||
|
fnow = fnew
|
||||||
|
else:
|
||||||
|
success = False
|
||||||
|
fnow = fold
|
||||||
|
|
||||||
|
# Store relevant variables
|
||||||
|
flog.append(fnow) # Current function value
|
||||||
|
|
||||||
|
iteration += 1
|
||||||
|
print_out(len_maxiters, display, fnow, current_grad, beta, iteration)
|
||||||
|
|
||||||
|
if success:
|
||||||
|
# Test for termination
|
||||||
|
if (np.max(np.abs(alpha * d)) < xtol) or (np.abs(fnew - fold) < ftol):
|
||||||
|
status = 'converged'
|
||||||
|
break
|
||||||
|
# return x, flog, function_eval, status
|
||||||
|
|
||||||
|
else:
|
||||||
|
# Update variables for new position
|
||||||
|
gradnew = gradf(x, *optargs)
|
||||||
|
current_grad = np.dot(gradnew, gradnew)
|
||||||
|
gradold = gradnew
|
||||||
|
fold = fnew
|
||||||
|
# If the gradient is zero then we are done.
|
||||||
|
if current_grad <= gtol:
|
||||||
|
status = 'converged'
|
||||||
|
break
|
||||||
|
# return x, flog, function_eval, status
|
||||||
|
|
||||||
|
# Adjust beta according to comparison ratio.
|
||||||
|
if Delta < 0.25:
|
||||||
|
beta = min(4.0 * beta, betamax)
|
||||||
|
if Delta > 0.75:
|
||||||
|
beta = max(0.5 * beta, betamin)
|
||||||
|
|
||||||
|
# Update search direction using Polak-Ribiere formula, or re-start
|
||||||
|
# in direction of negative gradient after nparams steps.
|
||||||
|
if nsuccess == x.size:
|
||||||
|
d = -gradnew
|
||||||
|
# beta = 1. # TODO: betareset!!
|
||||||
|
nsuccess = 0
|
||||||
|
elif success:
|
||||||
|
Gamma = np.dot(gradold - gradnew, gradnew) / (mu)
|
||||||
|
d = Gamma * d - gradnew
|
||||||
|
else:
|
||||||
|
# If we get here, then we haven't terminated in the given number of
|
||||||
|
# iterations.
|
||||||
|
status = "maxiter exceeded"
|
||||||
|
|
||||||
|
if display:
|
||||||
|
print_out(len_maxiters, display, fnow, current_grad, beta, iteration)
|
||||||
|
print ""
|
||||||
|
return x, flog, function_eval, status
|
||||||
356
GPy/inference/sgd.py
Normal file
356
GPy/inference/sgd.py
Normal file
|
|
@ -0,0 +1,356 @@
|
||||||
|
import numpy as np
|
||||||
|
import scipy as sp
|
||||||
|
import scipy.sparse
|
||||||
|
from optimization import Optimizer
|
||||||
|
from scipy import linalg, optimize
|
||||||
|
import pylab as plt
|
||||||
|
import copy, sys, pickle
|
||||||
|
|
||||||
|
class opt_SGD(Optimizer):
|
||||||
|
"""
|
||||||
|
Optimize using stochastic gradient descent.
|
||||||
|
|
||||||
|
*** Parameters ***
|
||||||
|
model: reference to the model object
|
||||||
|
iterations: number of iterations
|
||||||
|
learning_rate: learning rate
|
||||||
|
momentum: momentum
|
||||||
|
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self, start, iterations = 10, learning_rate = 1e-4, momentum = 0.9, model = None, messages = False, batch_size = 1, self_paced = False, center = True, iteration_file = None, learning_rate_adaptation=None, actual_iter=None, schedule=None, **kwargs):
|
||||||
|
self.opt_name = "Stochastic Gradient Descent"
|
||||||
|
|
||||||
|
self.model = model
|
||||||
|
self.iterations = iterations
|
||||||
|
self.momentum = momentum
|
||||||
|
self.learning_rate = learning_rate
|
||||||
|
self.x_opt = None
|
||||||
|
self.f_opt = None
|
||||||
|
self.messages = messages
|
||||||
|
self.batch_size = batch_size
|
||||||
|
self.self_paced = self_paced
|
||||||
|
self.center = center
|
||||||
|
self.param_traces = [('noise',[])]
|
||||||
|
self.iteration_file = iteration_file
|
||||||
|
self.learning_rate_adaptation = learning_rate_adaptation
|
||||||
|
self.actual_iter = actual_iter
|
||||||
|
if self.learning_rate_adaptation != None:
|
||||||
|
if self.learning_rate_adaptation == 'annealing':
|
||||||
|
self.learning_rate_0 = self.learning_rate
|
||||||
|
else:
|
||||||
|
self.learning_rate_0 = self.learning_rate.mean()
|
||||||
|
|
||||||
|
self.schedule = schedule
|
||||||
|
# if len([p for p in self.model.kern.parts if p.name == 'bias']) == 1:
|
||||||
|
# self.param_traces.append(('bias',[]))
|
||||||
|
# if len([p for p in self.model.kern.parts if p.name == 'linear']) == 1:
|
||||||
|
# self.param_traces.append(('linear',[]))
|
||||||
|
# if len([p for p in self.model.kern.parts if p.name == 'rbf']) == 1:
|
||||||
|
# self.param_traces.append(('rbf_var',[]))
|
||||||
|
|
||||||
|
self.param_traces = dict(self.param_traces)
|
||||||
|
self.fopt_trace = []
|
||||||
|
|
||||||
|
num_params = len(self.model._get_params())
|
||||||
|
if isinstance(self.learning_rate, float):
|
||||||
|
self.learning_rate = np.ones((num_params,)) * self.learning_rate
|
||||||
|
|
||||||
|
assert (len(self.learning_rate) == num_params), "there must be one learning rate per parameter"
|
||||||
|
|
||||||
|
def __str__(self):
|
||||||
|
status = "\nOptimizer: \t\t\t %s\n" % self.opt_name
|
||||||
|
status += "f(x_opt): \t\t\t %.4f\n" % self.f_opt
|
||||||
|
status += "Number of iterations: \t\t %d\n" % self.iterations
|
||||||
|
status += "Learning rate: \t\t\t max %.3f, min %.3f\n" % (self.learning_rate.max(), self.learning_rate.min())
|
||||||
|
status += "Momentum: \t\t\t %.3f\n" % self.momentum
|
||||||
|
status += "Batch size: \t\t\t %d\n" % self.batch_size
|
||||||
|
status += "Time elapsed: \t\t\t %s\n" % self.time
|
||||||
|
return status
|
||||||
|
|
||||||
|
def plot_traces(self):
|
||||||
|
plt.figure()
|
||||||
|
plt.subplot(211)
|
||||||
|
plt.title('Parameters')
|
||||||
|
for k in self.param_traces.keys():
|
||||||
|
plt.plot(self.param_traces[k], label=k)
|
||||||
|
plt.legend(loc=0)
|
||||||
|
plt.subplot(212)
|
||||||
|
plt.title('Objective function')
|
||||||
|
plt.plot(self.fopt_trace)
|
||||||
|
|
||||||
|
|
||||||
|
def non_null_samples(self, data):
|
||||||
|
return (np.isnan(data).sum(axis=1) == 0)
|
||||||
|
|
||||||
|
def check_for_missing(self, data):
|
||||||
|
if sp.sparse.issparse(self.model.likelihood.Y):
|
||||||
|
return True
|
||||||
|
else:
|
||||||
|
return np.isnan(data).sum() > 0
|
||||||
|
|
||||||
|
def subset_parameter_vector(self, x, samples, param_shapes):
|
||||||
|
subset = np.array([], dtype = int)
|
||||||
|
x = np.arange(0, len(x))
|
||||||
|
i = 0
|
||||||
|
|
||||||
|
for s in param_shapes:
|
||||||
|
N, input_dim = s
|
||||||
|
X = x[i:i+N*input_dim].reshape(N, input_dim)
|
||||||
|
X = X[samples]
|
||||||
|
subset = np.append(subset, X.flatten())
|
||||||
|
i += N*input_dim
|
||||||
|
|
||||||
|
subset = np.append(subset, x[i:])
|
||||||
|
|
||||||
|
return subset
|
||||||
|
|
||||||
|
def shift_constraints(self, j):
|
||||||
|
|
||||||
|
constrained_indices = copy.deepcopy(self.model.constrained_indices)
|
||||||
|
|
||||||
|
for c, constraint in enumerate(constrained_indices):
|
||||||
|
mask = (np.ones_like(constrained_indices[c]) == 1)
|
||||||
|
for i in range(len(constrained_indices[c])):
|
||||||
|
pos = np.where(j == constrained_indices[c][i])[0]
|
||||||
|
if len(pos) == 1:
|
||||||
|
self.model.constrained_indices[c][i] = pos
|
||||||
|
else:
|
||||||
|
mask[i] = False
|
||||||
|
|
||||||
|
self.model.constrained_indices[c] = self.model.constrained_indices[c][mask]
|
||||||
|
return constrained_indices
|
||||||
|
# back them up
|
||||||
|
# bounded_i = copy.deepcopy(self.model.constrained_bounded_indices)
|
||||||
|
# bounded_l = copy.deepcopy(self.model.constrained_bounded_lowers)
|
||||||
|
# bounded_u = copy.deepcopy(self.model.constrained_bounded_uppers)
|
||||||
|
|
||||||
|
# for b in range(len(bounded_i)): # for each group of constraints
|
||||||
|
# for bc in range(len(bounded_i[b])):
|
||||||
|
# pos = np.where(j == bounded_i[b][bc])[0]
|
||||||
|
# if len(pos) == 1:
|
||||||
|
# pos2 = np.where(self.model.constrained_bounded_indices[b] == bounded_i[b][bc])[0][0]
|
||||||
|
# self.model.constrained_bounded_indices[b][pos2] = pos[0]
|
||||||
|
# else:
|
||||||
|
# if len(self.model.constrained_bounded_indices[b]) == 1:
|
||||||
|
# # if it's the last index to be removed
|
||||||
|
# # the logic here is just a mess. If we remove the last one, then all the
|
||||||
|
# # b-indices change and we have to iterate through everything to find our
|
||||||
|
# # current index. Can't deal with this right now.
|
||||||
|
# raise NotImplementedError
|
||||||
|
|
||||||
|
# else: # just remove it from the indices
|
||||||
|
# mask = self.model.constrained_bounded_indices[b] != bc
|
||||||
|
# self.model.constrained_bounded_indices[b] = self.model.constrained_bounded_indices[b][mask]
|
||||||
|
|
||||||
|
|
||||||
|
# # here we shif the positive constraints. We cycle through each positive
|
||||||
|
# # constraint
|
||||||
|
# positive = self.model.constrained_positive_indices.copy()
|
||||||
|
# mask = (np.ones_like(positive) == 1)
|
||||||
|
# for p in range(len(positive)):
|
||||||
|
# # we now check whether the constrained index appears in the j vector
|
||||||
|
# # (the vector of the "active" indices)
|
||||||
|
# pos = np.where(j == self.model.constrained_positive_indices[p])[0]
|
||||||
|
# if len(pos) == 1:
|
||||||
|
# self.model.constrained_positive_indices[p] = pos
|
||||||
|
# else:
|
||||||
|
# mask[p] = False
|
||||||
|
# self.model.constrained_positive_indices = self.model.constrained_positive_indices[mask]
|
||||||
|
|
||||||
|
# return (bounded_i, bounded_l, bounded_u), positive
|
||||||
|
|
||||||
|
def restore_constraints(self, c):#b, p):
|
||||||
|
# self.model.constrained_bounded_indices = b[0]
|
||||||
|
# self.model.constrained_bounded_lowers = b[1]
|
||||||
|
# self.model.constrained_bounded_uppers = b[2]
|
||||||
|
# self.model.constrained_positive_indices = p
|
||||||
|
self.model.constrained_indices = c
|
||||||
|
|
||||||
|
def get_param_shapes(self, N = None, input_dim = None):
|
||||||
|
model_name = self.model.__class__.__name__
|
||||||
|
if model_name == 'GPLVM':
|
||||||
|
return [(N, input_dim)]
|
||||||
|
if model_name == 'Bayesian_GPLVM':
|
||||||
|
return [(N, input_dim), (N, input_dim)]
|
||||||
|
else:
|
||||||
|
raise NotImplementedError
|
||||||
|
|
||||||
|
def step_with_missing_data(self, f_fp, X, step, shapes):
|
||||||
|
N, input_dim = X.shape
|
||||||
|
|
||||||
|
if not sp.sparse.issparse(self.model.likelihood.Y):
|
||||||
|
Y = self.model.likelihood.Y
|
||||||
|
samples = self.non_null_samples(self.model.likelihood.Y)
|
||||||
|
self.model.N = samples.sum()
|
||||||
|
Y = Y[samples]
|
||||||
|
else:
|
||||||
|
samples = self.model.likelihood.Y.nonzero()[0]
|
||||||
|
self.model.N = len(samples)
|
||||||
|
Y = np.asarray(self.model.likelihood.Y[samples].todense(), dtype = np.float64)
|
||||||
|
|
||||||
|
if self.model.N == 0 or Y.std() == 0.0:
|
||||||
|
return 0, step, self.model.N
|
||||||
|
|
||||||
|
self.model.likelihood._offset = Y.mean()
|
||||||
|
self.model.likelihood._scale = Y.std()
|
||||||
|
self.model.likelihood.set_data(Y)
|
||||||
|
# self.model.likelihood.V = self.model.likelihood.Y*self.model.likelihood.precision
|
||||||
|
|
||||||
|
sigma = self.model.likelihood._variance
|
||||||
|
self.model.likelihood._variance = None # invalidate cache
|
||||||
|
self.model.likelihood._set_params(sigma)
|
||||||
|
|
||||||
|
|
||||||
|
j = self.subset_parameter_vector(self.x_opt, samples, shapes)
|
||||||
|
self.model.X = X[samples]
|
||||||
|
|
||||||
|
model_name = self.model.__class__.__name__
|
||||||
|
|
||||||
|
if model_name == 'Bayesian_GPLVM':
|
||||||
|
self.model.likelihood.YYT = np.dot(self.model.likelihood.Y, self.model.likelihood.Y.T)
|
||||||
|
self.model.likelihood.trYYT = np.trace(self.model.likelihood.YYT)
|
||||||
|
|
||||||
|
ci = self.shift_constraints(j)
|
||||||
|
f, fp = f_fp(self.x_opt[j])
|
||||||
|
|
||||||
|
step[j] = self.momentum * step[j] + self.learning_rate[j] * fp
|
||||||
|
self.x_opt[j] -= step[j]
|
||||||
|
self.restore_constraints(ci)
|
||||||
|
|
||||||
|
self.model.grads[j] = fp
|
||||||
|
# restore likelihood _offset and _scale, otherwise when we call set_data(y) on
|
||||||
|
# the next feature, it will get normalized with the mean and std of this one.
|
||||||
|
self.model.likelihood._offset = 0
|
||||||
|
self.model.likelihood._scale = 1
|
||||||
|
|
||||||
|
return f, step, self.model.N
|
||||||
|
|
||||||
|
def adapt_learning_rate(self, t, D):
|
||||||
|
if self.learning_rate_adaptation == 'adagrad':
|
||||||
|
if t > 0:
|
||||||
|
g_k = self.model.grads
|
||||||
|
self.s_k += np.square(g_k)
|
||||||
|
t0 = 100.0
|
||||||
|
self.learning_rate = 0.1/(t0 + np.sqrt(self.s_k))
|
||||||
|
|
||||||
|
import pdb; pdb.set_trace()
|
||||||
|
else:
|
||||||
|
self.learning_rate = np.zeros_like(self.learning_rate)
|
||||||
|
self.s_k = np.zeros_like(self.x_opt)
|
||||||
|
|
||||||
|
elif self.learning_rate_adaptation == 'annealing':
|
||||||
|
#self.learning_rate = self.learning_rate_0/(1+float(t+1)/10)
|
||||||
|
self.learning_rate = np.ones_like(self.learning_rate) * self.schedule[t]
|
||||||
|
|
||||||
|
|
||||||
|
elif self.learning_rate_adaptation == 'semi_pesky':
|
||||||
|
if self.model.__class__.__name__ == 'Bayesian_GPLVM':
|
||||||
|
g_t = self.model.grads
|
||||||
|
if t == 0:
|
||||||
|
self.hbar_t = 0.0
|
||||||
|
self.tau_t = 100.0
|
||||||
|
self.gbar_t = 0.0
|
||||||
|
|
||||||
|
self.gbar_t = (1-1/self.tau_t)*self.gbar_t + 1/self.tau_t * g_t
|
||||||
|
self.hbar_t = (1-1/self.tau_t)*self.hbar_t + 1/self.tau_t * np.dot(g_t.T, g_t)
|
||||||
|
self.learning_rate = np.ones_like(self.learning_rate)*(np.dot(self.gbar_t.T, self.gbar_t) / self.hbar_t)
|
||||||
|
tau_t = self.tau_t*(1-self.learning_rate) + 1
|
||||||
|
|
||||||
|
|
||||||
|
def opt(self, f_fp=None, f=None, fp=None):
|
||||||
|
self.x_opt = self.model._get_params_transformed()
|
||||||
|
self.grads = []
|
||||||
|
|
||||||
|
X, Y = self.model.X.copy(), self.model.likelihood.Y.copy()
|
||||||
|
|
||||||
|
self.model.likelihood.YYT = 0
|
||||||
|
self.model.likelihood.trYYT = 0
|
||||||
|
self.model.likelihood._offset = 0.0
|
||||||
|
self.model.likelihood._scale = 1.0
|
||||||
|
|
||||||
|
N, input_dim = self.model.X.shape
|
||||||
|
D = self.model.likelihood.Y.shape[1]
|
||||||
|
num_params = self.model._get_params()
|
||||||
|
self.trace = []
|
||||||
|
missing_data = self.check_for_missing(self.model.likelihood.Y)
|
||||||
|
|
||||||
|
step = np.zeros_like(num_params)
|
||||||
|
for it in range(self.iterations):
|
||||||
|
if self.actual_iter != None:
|
||||||
|
it = self.actual_iter
|
||||||
|
|
||||||
|
self.model.grads = np.zeros_like(self.x_opt) # TODO this is ugly
|
||||||
|
|
||||||
|
if it == 0 or self.self_paced is False:
|
||||||
|
features = np.random.permutation(Y.shape[1])
|
||||||
|
else:
|
||||||
|
features = np.argsort(NLL)
|
||||||
|
|
||||||
|
b = len(features)/self.batch_size
|
||||||
|
features = [features[i::b] for i in range(b)]
|
||||||
|
NLL = []
|
||||||
|
import pylab as plt
|
||||||
|
for count, j in enumerate(features):
|
||||||
|
self.model.input_dim = len(j)
|
||||||
|
self.model.likelihood.input_dim = len(j)
|
||||||
|
self.model.likelihood.set_data(Y[:, j])
|
||||||
|
# self.model.likelihood.V = self.model.likelihood.Y*self.model.likelihood.precision
|
||||||
|
|
||||||
|
sigma = self.model.likelihood._variance
|
||||||
|
self.model.likelihood._variance = None # invalidate cache
|
||||||
|
self.model.likelihood._set_params(sigma)
|
||||||
|
|
||||||
|
if missing_data:
|
||||||
|
shapes = self.get_param_shapes(N, input_dim)
|
||||||
|
f, step, Nj = self.step_with_missing_data(f_fp, X, step, shapes)
|
||||||
|
else:
|
||||||
|
self.model.likelihood.YYT = np.dot(self.model.likelihood.Y, self.model.likelihood.Y.T)
|
||||||
|
self.model.likelihood.trYYT = np.trace(self.model.likelihood.YYT)
|
||||||
|
Nj = N
|
||||||
|
f, fp = f_fp(self.x_opt)
|
||||||
|
self.model.grads = fp.copy()
|
||||||
|
step = self.momentum * step + self.learning_rate * fp
|
||||||
|
self.x_opt -= step
|
||||||
|
|
||||||
|
if self.messages == 2:
|
||||||
|
noise = self.model.likelihood._variance
|
||||||
|
status = "evaluating {feature: 5d}/{tot: 5d} \t f: {f: 2.3f} \t non-missing: {nm: 4d}\t noise: {noise: 2.4f}\r".format(feature = count, tot = len(features), f = f, nm = Nj, noise = noise)
|
||||||
|
sys.stdout.write(status)
|
||||||
|
sys.stdout.flush()
|
||||||
|
self.param_traces['noise'].append(noise)
|
||||||
|
|
||||||
|
self.adapt_learning_rate(it+count, D)
|
||||||
|
NLL.append(f)
|
||||||
|
self.fopt_trace.append(NLL[-1])
|
||||||
|
# fig = plt.figure('traces')
|
||||||
|
# plt.clf()
|
||||||
|
# plt.plot(self.param_traces['noise'])
|
||||||
|
|
||||||
|
# for k in self.param_traces.keys():
|
||||||
|
# self.param_traces[k].append(self.model.get(k)[0])
|
||||||
|
self.grads.append(self.model.grads.tolist())
|
||||||
|
# should really be a sum(), but earlier samples in the iteration will have a very crappy ll
|
||||||
|
self.f_opt = np.mean(NLL)
|
||||||
|
self.model.N = N
|
||||||
|
self.model.X = X
|
||||||
|
self.model.input_dim = D
|
||||||
|
self.model.likelihood.N = N
|
||||||
|
self.model.likelihood.input_dim = D
|
||||||
|
self.model.likelihood.Y = Y
|
||||||
|
sigma = self.model.likelihood._variance
|
||||||
|
self.model.likelihood._variance = None # invalidate cache
|
||||||
|
self.model.likelihood._set_params(sigma)
|
||||||
|
|
||||||
|
self.trace.append(self.f_opt)
|
||||||
|
if self.iteration_file is not None:
|
||||||
|
f = open(self.iteration_file + "iteration%d.pickle" % it, 'w')
|
||||||
|
data = [self.x_opt, self.fopt_trace, self.param_traces]
|
||||||
|
pickle.dump(data, f)
|
||||||
|
f.close()
|
||||||
|
|
||||||
|
if self.messages != 0:
|
||||||
|
sys.stdout.write('\r' + ' '*len(status)*2 + ' \r')
|
||||||
|
status = "SGD Iteration: {0: 3d}/{1: 3d} f: {2: 2.3f} max eta: {3: 1.5f}\n".format(it+1, self.iterations, self.f_opt, self.learning_rate.max())
|
||||||
|
sys.stdout.write(status)
|
||||||
|
sys.stdout.flush()
|
||||||
336
GPy/likelihoods/ep.py
Normal file
336
GPy/likelihoods/ep.py
Normal file
|
|
@ -0,0 +1,336 @@
|
||||||
|
import numpy as np
|
||||||
|
from scipy import stats, linalg
|
||||||
|
from ..util.linalg import pdinv,mdot,jitchol,chol_inv,DSYR,tdot
|
||||||
|
from likelihood import likelihood
|
||||||
|
|
||||||
|
class EP(likelihood):
|
||||||
|
def __init__(self,data,LikelihoodFunction,epsilon=1e-3,power_ep=[1.,1.]):
|
||||||
|
"""
|
||||||
|
Expectation Propagation
|
||||||
|
|
||||||
|
Arguments
|
||||||
|
---------
|
||||||
|
epsilon : Convergence criterion, maximum squared difference allowed between mean updates to stop iterations (float)
|
||||||
|
LikelihoodFunction : a likelihood function (see likelihood_functions.py)
|
||||||
|
"""
|
||||||
|
self.LikelihoodFunction = LikelihoodFunction
|
||||||
|
self.epsilon = epsilon
|
||||||
|
self.eta, self.delta = power_ep
|
||||||
|
self.data = data
|
||||||
|
self.N, self.input_dim = self.data.shape
|
||||||
|
self.is_heteroscedastic = True
|
||||||
|
self.Nparams = 0
|
||||||
|
self._transf_data = self.LikelihoodFunction._preprocess_values(data)
|
||||||
|
|
||||||
|
#Initial values - Likelihood approximation parameters:
|
||||||
|
#p(y|f) = t(f|tau_tilde,v_tilde)
|
||||||
|
self.tau_tilde = np.zeros(self.N)
|
||||||
|
self.v_tilde = np.zeros(self.N)
|
||||||
|
|
||||||
|
#initial values for the GP variables
|
||||||
|
self.Y = np.zeros((self.N,1))
|
||||||
|
self.covariance_matrix = np.eye(self.N)
|
||||||
|
self.precision = np.ones(self.N)[:,None]
|
||||||
|
self.Z = 0
|
||||||
|
self.YYT = None
|
||||||
|
self.V = self.precision * self.Y
|
||||||
|
|
||||||
|
def restart(self):
|
||||||
|
self.tau_tilde = np.zeros(self.N)
|
||||||
|
self.v_tilde = np.zeros(self.N)
|
||||||
|
self.Y = np.zeros((self.N,1))
|
||||||
|
self.covariance_matrix = np.eye(self.N)
|
||||||
|
self.precision = np.ones(self.N)[:,None]
|
||||||
|
self.Z = 0
|
||||||
|
self.YYT = None
|
||||||
|
self.V = self.precision * self.Y
|
||||||
|
|
||||||
|
def predictive_values(self,mu,var,full_cov):
|
||||||
|
if full_cov:
|
||||||
|
raise NotImplementedError, "Cannot make correlated predictions with an EP likelihood"
|
||||||
|
return self.LikelihoodFunction.predictive_values(mu,var)
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
return np.zeros(0)
|
||||||
|
def _get_param_names(self):
|
||||||
|
return []
|
||||||
|
def _set_params(self,p):
|
||||||
|
pass # TODO: the EP likelihood might want to take some parameters...
|
||||||
|
def _gradients(self,partial):
|
||||||
|
return np.zeros(0) # TODO: the EP likelihood might want to take some parameters...
|
||||||
|
|
||||||
|
def _compute_GP_variables(self):
|
||||||
|
#Variables to be called from GP
|
||||||
|
mu_tilde = self.v_tilde/self.tau_tilde #When calling EP, this variable is used instead of Y in the GP model
|
||||||
|
sigma_sum = 1./self.tau_ + 1./self.tau_tilde
|
||||||
|
mu_diff_2 = (self.v_/self.tau_ - mu_tilde)**2
|
||||||
|
self.Z = np.sum(np.log(self.Z_hat)) + 0.5*np.sum(np.log(sigma_sum)) + 0.5*np.sum(mu_diff_2/sigma_sum) #Normalization constant, aka Z_ep
|
||||||
|
|
||||||
|
self.Y = mu_tilde[:,None]
|
||||||
|
self.YYT = np.dot(self.Y,self.Y.T)
|
||||||
|
self.covariance_matrix = np.diag(1./self.tau_tilde)
|
||||||
|
self.precision = self.tau_tilde[:,None]
|
||||||
|
self.V = self.precision * self.Y
|
||||||
|
|
||||||
|
def fit_full(self,K):
|
||||||
|
"""
|
||||||
|
The expectation-propagation algorithm.
|
||||||
|
For nomenclature see Rasmussen & Williams 2006.
|
||||||
|
"""
|
||||||
|
#Initial values - Posterior distribution parameters: q(f|X,Y) = N(f|mu,Sigma)
|
||||||
|
mu = np.zeros(self.N)
|
||||||
|
Sigma = K.copy()
|
||||||
|
|
||||||
|
"""
|
||||||
|
Initial values - Cavity distribution parameters:
|
||||||
|
q_(f|mu_,sigma2_) = Product{q_i(f|mu_i,sigma2_i)}
|
||||||
|
sigma_ = 1./tau_
|
||||||
|
mu_ = v_/tau_
|
||||||
|
"""
|
||||||
|
self.tau_ = np.empty(self.N,dtype=float)
|
||||||
|
self.v_ = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Initial values - Marginal moments
|
||||||
|
z = np.empty(self.N,dtype=float)
|
||||||
|
self.Z_hat = np.empty(self.N,dtype=float)
|
||||||
|
phi = np.empty(self.N,dtype=float)
|
||||||
|
mu_hat = np.empty(self.N,dtype=float)
|
||||||
|
sigma2_hat = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Approximation
|
||||||
|
epsilon_np1 = self.epsilon + 1.
|
||||||
|
epsilon_np2 = self.epsilon + 1.
|
||||||
|
self.iterations = 0
|
||||||
|
self.np1 = [self.tau_tilde.copy()]
|
||||||
|
self.np2 = [self.v_tilde.copy()]
|
||||||
|
while epsilon_np1 > self.epsilon or epsilon_np2 > self.epsilon:
|
||||||
|
update_order = np.random.permutation(self.N)
|
||||||
|
for i in update_order:
|
||||||
|
#Cavity distribution parameters
|
||||||
|
self.tau_[i] = 1./Sigma[i,i] - self.eta*self.tau_tilde[i]
|
||||||
|
self.v_[i] = mu[i]/Sigma[i,i] - self.eta*self.v_tilde[i]
|
||||||
|
#Marginal moments
|
||||||
|
self.Z_hat[i], mu_hat[i], sigma2_hat[i] = self.LikelihoodFunction.moments_match(self._transf_data[i],self.tau_[i],self.v_[i])
|
||||||
|
#Site parameters update
|
||||||
|
Delta_tau = self.delta/self.eta*(1./sigma2_hat[i] - 1./Sigma[i,i])
|
||||||
|
Delta_v = self.delta/self.eta*(mu_hat[i]/sigma2_hat[i] - mu[i]/Sigma[i,i])
|
||||||
|
self.tau_tilde[i] += Delta_tau
|
||||||
|
self.v_tilde[i] += Delta_v
|
||||||
|
#Posterior distribution parameters update
|
||||||
|
DSYR(Sigma,Sigma[:,i].copy(), -float(Delta_tau/(1.+ Delta_tau*Sigma[i,i])))
|
||||||
|
mu = np.dot(Sigma,self.v_tilde)
|
||||||
|
self.iterations += 1
|
||||||
|
#Sigma recomptutation with Cholesky decompositon
|
||||||
|
Sroot_tilde_K = np.sqrt(self.tau_tilde)[:,None]*K
|
||||||
|
B = np.eye(self.N) + np.sqrt(self.tau_tilde)[None,:]*Sroot_tilde_K
|
||||||
|
L = jitchol(B)
|
||||||
|
V,info = linalg.lapack.flapack.dtrtrs(L,Sroot_tilde_K,lower=1)
|
||||||
|
Sigma = K - np.dot(V.T,V)
|
||||||
|
mu = np.dot(Sigma,self.v_tilde)
|
||||||
|
epsilon_np1 = sum((self.tau_tilde-self.np1[-1])**2)/self.N
|
||||||
|
epsilon_np2 = sum((self.v_tilde-self.np2[-1])**2)/self.N
|
||||||
|
self.np1.append(self.tau_tilde.copy())
|
||||||
|
self.np2.append(self.v_tilde.copy())
|
||||||
|
|
||||||
|
return self._compute_GP_variables()
|
||||||
|
|
||||||
|
def fit_DTC(self, Kmm, Kmn):
|
||||||
|
"""
|
||||||
|
The expectation-propagation algorithm with sparse pseudo-input.
|
||||||
|
For nomenclature see ... 2013.
|
||||||
|
"""
|
||||||
|
M = Kmm.shape[0]
|
||||||
|
|
||||||
|
#TODO: this doesn't work with uncertain inputs!
|
||||||
|
|
||||||
|
"""
|
||||||
|
Prior approximation parameters:
|
||||||
|
q(f|X) = int_{df}{N(f|KfuKuu_invu,diag(Kff-Qff)*N(u|0,Kuu)} = N(f|0,Sigma0)
|
||||||
|
Sigma0 = Qnn = Knm*Kmmi*Kmn
|
||||||
|
"""
|
||||||
|
KmnKnm = np.dot(Kmn,Kmn.T)
|
||||||
|
Lm = jitchol(Kmm)
|
||||||
|
Lmi = chol_inv(Lm)
|
||||||
|
Kmmi = np.dot(Lmi.T,Lmi)
|
||||||
|
KmmiKmn = np.dot(Kmmi,Kmn)
|
||||||
|
Qnn_diag = np.sum(Kmn*KmmiKmn,-2)
|
||||||
|
LLT0 = Kmm.copy()
|
||||||
|
|
||||||
|
#Kmmi, Lm, Lmi, Kmm_logdet = pdinv(Kmm)
|
||||||
|
#KmnKnm = np.dot(Kmn, Kmn.T)
|
||||||
|
#KmmiKmn = np.dot(Kmmi,Kmn)
|
||||||
|
#Qnn_diag = np.sum(Kmn*KmmiKmn,-2)
|
||||||
|
#LLT0 = Kmm.copy()
|
||||||
|
|
||||||
|
"""
|
||||||
|
Posterior approximation: q(f|y) = N(f| mu, Sigma)
|
||||||
|
Sigma = Diag + P*R.T*R*P.T + K
|
||||||
|
mu = w + P*Gamma
|
||||||
|
"""
|
||||||
|
mu = np.zeros(self.N)
|
||||||
|
LLT = Kmm.copy()
|
||||||
|
Sigma_diag = Qnn_diag.copy()
|
||||||
|
|
||||||
|
"""
|
||||||
|
Initial values - Cavity distribution parameters:
|
||||||
|
q_(g|mu_,sigma2_) = Product{q_i(g|mu_i,sigma2_i)}
|
||||||
|
sigma_ = 1./tau_
|
||||||
|
mu_ = v_/tau_
|
||||||
|
"""
|
||||||
|
self.tau_ = np.empty(self.N,dtype=float)
|
||||||
|
self.v_ = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Initial values - Marginal moments
|
||||||
|
z = np.empty(self.N,dtype=float)
|
||||||
|
self.Z_hat = np.empty(self.N,dtype=float)
|
||||||
|
phi = np.empty(self.N,dtype=float)
|
||||||
|
mu_hat = np.empty(self.N,dtype=float)
|
||||||
|
sigma2_hat = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Approximation
|
||||||
|
epsilon_np1 = 1
|
||||||
|
epsilon_np2 = 1
|
||||||
|
self.iterations = 0
|
||||||
|
np1 = [self.tau_tilde.copy()]
|
||||||
|
np2 = [self.v_tilde.copy()]
|
||||||
|
while epsilon_np1 > self.epsilon or epsilon_np2 > self.epsilon:
|
||||||
|
update_order = np.random.permutation(self.N)
|
||||||
|
for i in update_order:
|
||||||
|
#Cavity distribution parameters
|
||||||
|
self.tau_[i] = 1./Sigma_diag[i] - self.eta*self.tau_tilde[i]
|
||||||
|
self.v_[i] = mu[i]/Sigma_diag[i] - self.eta*self.v_tilde[i]
|
||||||
|
#Marginal moments
|
||||||
|
self.Z_hat[i], mu_hat[i], sigma2_hat[i] = self.LikelihoodFunction.moments_match(self._transf_data[i],self.tau_[i],self.v_[i])
|
||||||
|
#Site parameters update
|
||||||
|
Delta_tau = self.delta/self.eta*(1./sigma2_hat[i] - 1./Sigma_diag[i])
|
||||||
|
Delta_v = self.delta/self.eta*(mu_hat[i]/sigma2_hat[i] - mu[i]/Sigma_diag[i])
|
||||||
|
self.tau_tilde[i] += Delta_tau
|
||||||
|
self.v_tilde[i] += Delta_v
|
||||||
|
#Posterior distribution parameters update
|
||||||
|
DSYR(LLT,Kmn[:,i].copy(),Delta_tau) #LLT = LLT + np.outer(Kmn[:,i],Kmn[:,i])*Delta_tau
|
||||||
|
L = jitchol(LLT)
|
||||||
|
#cholUpdate(L,Kmn[:,i]*np.sqrt(Delta_tau))
|
||||||
|
V,info = linalg.lapack.flapack.dtrtrs(L,Kmn,lower=1)
|
||||||
|
Sigma_diag = np.sum(V*V,-2)
|
||||||
|
si = np.sum(V.T*V[:,i],-1)
|
||||||
|
mu += (Delta_v-Delta_tau*mu[i])*si
|
||||||
|
self.iterations += 1
|
||||||
|
#Sigma recomputation with Cholesky decompositon
|
||||||
|
LLT = LLT0 + np.dot(Kmn*self.tau_tilde[None,:],Kmn.T)
|
||||||
|
L = jitchol(LLT)
|
||||||
|
V,info = linalg.lapack.flapack.dtrtrs(L,Kmn,lower=1)
|
||||||
|
V2,info = linalg.lapack.flapack.dtrtrs(L.T,V,lower=0)
|
||||||
|
Sigma_diag = np.sum(V*V,-2)
|
||||||
|
Knmv_tilde = np.dot(Kmn,self.v_tilde)
|
||||||
|
mu = np.dot(V2.T,Knmv_tilde)
|
||||||
|
epsilon_np1 = sum((self.tau_tilde-np1[-1])**2)/self.N
|
||||||
|
epsilon_np2 = sum((self.v_tilde-np2[-1])**2)/self.N
|
||||||
|
np1.append(self.tau_tilde.copy())
|
||||||
|
np2.append(self.v_tilde.copy())
|
||||||
|
|
||||||
|
self._compute_GP_variables()
|
||||||
|
|
||||||
|
def fit_FITC(self, Kmm, Kmn, Knn_diag):
|
||||||
|
"""
|
||||||
|
The expectation-propagation algorithm with sparse pseudo-input.
|
||||||
|
For nomenclature see Naish-Guzman and Holden, 2008.
|
||||||
|
"""
|
||||||
|
M = Kmm.shape[0]
|
||||||
|
|
||||||
|
"""
|
||||||
|
Prior approximation parameters:
|
||||||
|
q(f|X) = int_{df}{N(f|KfuKuu_invu,diag(Kff-Qff)*N(u|0,Kuu)} = N(f|0,Sigma0)
|
||||||
|
Sigma0 = diag(Knn-Qnn) + Qnn, Qnn = Knm*Kmmi*Kmn
|
||||||
|
"""
|
||||||
|
Lm = jitchol(Kmm)
|
||||||
|
Lmi = chol_inv(Lm)
|
||||||
|
Kmmi = np.dot(Lmi.T,Lmi)
|
||||||
|
P0 = Kmn.T
|
||||||
|
KmnKnm = np.dot(P0.T, P0)
|
||||||
|
KmmiKmn = np.dot(Kmmi,P0.T)
|
||||||
|
Qnn_diag = np.sum(P0.T*KmmiKmn,-2)
|
||||||
|
Diag0 = Knn_diag - Qnn_diag
|
||||||
|
R0 = jitchol(Kmmi).T
|
||||||
|
|
||||||
|
"""
|
||||||
|
Posterior approximation: q(f|y) = N(f| mu, Sigma)
|
||||||
|
Sigma = Diag + P*R.T*R*P.T + K
|
||||||
|
mu = w + P*Gamma
|
||||||
|
"""
|
||||||
|
self.w = np.zeros(self.N)
|
||||||
|
self.Gamma = np.zeros(M)
|
||||||
|
mu = np.zeros(self.N)
|
||||||
|
P = P0.copy()
|
||||||
|
R = R0.copy()
|
||||||
|
Diag = Diag0.copy()
|
||||||
|
Sigma_diag = Knn_diag
|
||||||
|
RPT0 = np.dot(R0,P0.T)
|
||||||
|
|
||||||
|
"""
|
||||||
|
Initial values - Cavity distribution parameters:
|
||||||
|
q_(g|mu_,sigma2_) = Product{q_i(g|mu_i,sigma2_i)}
|
||||||
|
sigma_ = 1./tau_
|
||||||
|
mu_ = v_/tau_
|
||||||
|
"""
|
||||||
|
self.tau_ = np.empty(self.N,dtype=float)
|
||||||
|
self.v_ = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Initial values - Marginal moments
|
||||||
|
z = np.empty(self.N,dtype=float)
|
||||||
|
self.Z_hat = np.empty(self.N,dtype=float)
|
||||||
|
phi = np.empty(self.N,dtype=float)
|
||||||
|
mu_hat = np.empty(self.N,dtype=float)
|
||||||
|
sigma2_hat = np.empty(self.N,dtype=float)
|
||||||
|
|
||||||
|
#Approximation
|
||||||
|
epsilon_np1 = 1
|
||||||
|
epsilon_np2 = 1
|
||||||
|
self.iterations = 0
|
||||||
|
self.np1 = [self.tau_tilde.copy()]
|
||||||
|
self.np2 = [self.v_tilde.copy()]
|
||||||
|
while epsilon_np1 > self.epsilon or epsilon_np2 > self.epsilon:
|
||||||
|
update_order = np.random.permutation(self.N)
|
||||||
|
for i in update_order:
|
||||||
|
#Cavity distribution parameters
|
||||||
|
self.tau_[i] = 1./Sigma_diag[i] - self.eta*self.tau_tilde[i]
|
||||||
|
self.v_[i] = mu[i]/Sigma_diag[i] - self.eta*self.v_tilde[i]
|
||||||
|
#Marginal moments
|
||||||
|
self.Z_hat[i], mu_hat[i], sigma2_hat[i] = self.LikelihoodFunction.moments_match(self._transf_data[i],self.tau_[i],self.v_[i])
|
||||||
|
#Site parameters update
|
||||||
|
Delta_tau = self.delta/self.eta*(1./sigma2_hat[i] - 1./Sigma_diag[i])
|
||||||
|
Delta_v = self.delta/self.eta*(mu_hat[i]/sigma2_hat[i] - mu[i]/Sigma_diag[i])
|
||||||
|
self.tau_tilde[i] += Delta_tau
|
||||||
|
self.v_tilde[i] += Delta_v
|
||||||
|
#Posterior distribution parameters update
|
||||||
|
dtd1 = Delta_tau*Diag[i] + 1.
|
||||||
|
dii = Diag[i]
|
||||||
|
Diag[i] = dii - (Delta_tau * dii**2.)/dtd1
|
||||||
|
pi_ = P[i,:].reshape(1,M)
|
||||||
|
P[i,:] = pi_ - (Delta_tau*dii)/dtd1 * pi_
|
||||||
|
Rp_i = np.dot(R,pi_.T)
|
||||||
|
RTR = np.dot(R.T,np.dot(np.eye(M) - Delta_tau/(1.+Delta_tau*Sigma_diag[i]) * np.dot(Rp_i,Rp_i.T),R))
|
||||||
|
R = jitchol(RTR).T
|
||||||
|
self.w[i] += (Delta_v - Delta_tau*self.w[i])*dii/dtd1
|
||||||
|
self.Gamma += (Delta_v - Delta_tau*mu[i])*np.dot(RTR,P[i,:].T)
|
||||||
|
RPT = np.dot(R,P.T)
|
||||||
|
Sigma_diag = Diag + np.sum(RPT.T*RPT.T,-1)
|
||||||
|
mu = self.w + np.dot(P,self.Gamma)
|
||||||
|
self.iterations += 1
|
||||||
|
#Sigma recomptutation with Cholesky decompositon
|
||||||
|
Iplus_Dprod_i = 1./(1.+ Diag0 * self.tau_tilde)
|
||||||
|
Diag = Diag0 * Iplus_Dprod_i
|
||||||
|
P = Iplus_Dprod_i[:,None] * P0
|
||||||
|
safe_diag = np.where(Diag0 < self.tau_tilde, self.tau_tilde/(1.+Diag0*self.tau_tilde), (1. - Iplus_Dprod_i)/Diag0)
|
||||||
|
L = jitchol(np.eye(M) + np.dot(RPT0,safe_diag[:,None]*RPT0.T))
|
||||||
|
R,info = linalg.lapack.flapack.dtrtrs(L,R0,lower=1)
|
||||||
|
RPT = np.dot(R,P.T)
|
||||||
|
Sigma_diag = Diag + np.sum(RPT.T*RPT.T,-1)
|
||||||
|
self.w = Diag * self.v_tilde
|
||||||
|
self.Gamma = np.dot(R.T, np.dot(RPT,self.v_tilde))
|
||||||
|
mu = self.w + np.dot(P,self.Gamma)
|
||||||
|
epsilon_np1 = sum((self.tau_tilde-self.np1[-1])**2)/self.N
|
||||||
|
epsilon_np2 = sum((self.v_tilde-self.np2[-1])**2)/self.N
|
||||||
|
self.np1.append(self.tau_tilde.copy())
|
||||||
|
self.np2.append(self.v_tilde.copy())
|
||||||
|
|
||||||
|
return self._compute_GP_variables()
|
||||||
93
GPy/likelihoods/gaussian.py
Normal file
93
GPy/likelihoods/gaussian.py
Normal file
|
|
@ -0,0 +1,93 @@
|
||||||
|
import numpy as np
|
||||||
|
from likelihood import likelihood
|
||||||
|
|
||||||
|
class Gaussian(likelihood):
|
||||||
|
"""
|
||||||
|
Likelihood class for doing Expectation propagation
|
||||||
|
|
||||||
|
:param Y: observed output (Nx1 numpy.darray)
|
||||||
|
..Note:: Y values allowed depend on the likelihood_function used
|
||||||
|
:param variance :
|
||||||
|
:param normalize: whether to normalize the data before computing (predictions will be in original scales)
|
||||||
|
:type normalize: False|True
|
||||||
|
"""
|
||||||
|
def __init__(self, data, variance=1., normalize=False):
|
||||||
|
self.is_heteroscedastic = False
|
||||||
|
self.Nparams = 1
|
||||||
|
self.Z = 0. # a correction factor which accounts for the approximation made
|
||||||
|
N, self.input_dim = data.shape
|
||||||
|
|
||||||
|
# normalization
|
||||||
|
if normalize:
|
||||||
|
self._offset = data.mean(0)[None, :]
|
||||||
|
self._scale = data.std(0)[None, :]
|
||||||
|
# Don't scale outputs which have zero variance to zero.
|
||||||
|
self._scale[np.nonzero(self._scale == 0.)] = 1.0e-3
|
||||||
|
else:
|
||||||
|
self._offset = np.zeros((1, self.input_dim))
|
||||||
|
self._scale = np.ones((1, self.input_dim))
|
||||||
|
|
||||||
|
self.set_data(data)
|
||||||
|
|
||||||
|
self._variance = np.asarray(variance) + 1.
|
||||||
|
self._set_params(np.asarray(variance))
|
||||||
|
|
||||||
|
def set_data(self, data):
|
||||||
|
self.data = data
|
||||||
|
self.N, D = data.shape
|
||||||
|
assert D == self.input_dim
|
||||||
|
self.Y = (self.data - self._offset) / self._scale
|
||||||
|
if D > self.N:
|
||||||
|
self.YYT = np.dot(self.Y, self.Y.T)
|
||||||
|
self.trYYT = np.trace(self.YYT)
|
||||||
|
else:
|
||||||
|
self.YYT = None
|
||||||
|
self.trYYT = np.sum(np.square(self.Y))
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
return np.asarray(self._variance)
|
||||||
|
|
||||||
|
def _get_param_names(self):
|
||||||
|
return ["noise_variance"]
|
||||||
|
|
||||||
|
def _set_params(self, x):
|
||||||
|
x = np.float64(x)
|
||||||
|
if np.all(self._variance != x):
|
||||||
|
if x == 0.:
|
||||||
|
self.precision = None
|
||||||
|
self.V = None
|
||||||
|
else:
|
||||||
|
self.precision = 1. / x
|
||||||
|
self.V = (self.precision) * self.Y
|
||||||
|
self.covariance_matrix = np.eye(self.N) * x
|
||||||
|
self._variance = x
|
||||||
|
|
||||||
|
def predictive_values(self, mu, var, full_cov):
|
||||||
|
"""
|
||||||
|
Un-normalize the prediction and add the likelihood variance, then return the 5%, 95% interval
|
||||||
|
"""
|
||||||
|
mean = mu * self._scale + self._offset
|
||||||
|
if full_cov:
|
||||||
|
if self.input_dim > 1:
|
||||||
|
raise NotImplementedError, "TODO"
|
||||||
|
# Note. for input_dim>1, we need to re-normalise all the outputs independently.
|
||||||
|
# This will mess up computations of diag(true_var), below.
|
||||||
|
# note that the upper, lower quantiles should be the same shape as mean
|
||||||
|
# Augment the output variance with the likelihood variance and rescale.
|
||||||
|
true_var = (var + np.eye(var.shape[0]) * self._variance) * self._scale ** 2
|
||||||
|
_5pc = mean - 2.*np.sqrt(np.diag(true_var))
|
||||||
|
_95pc = mean + 2.*np.sqrt(np.diag(true_var))
|
||||||
|
else:
|
||||||
|
true_var = (var + self._variance) * self._scale ** 2
|
||||||
|
_5pc = mean - 2.*np.sqrt(true_var)
|
||||||
|
_95pc = mean + 2.*np.sqrt(true_var)
|
||||||
|
return mean, true_var, _5pc, _95pc
|
||||||
|
|
||||||
|
def fit_full(self):
|
||||||
|
"""
|
||||||
|
No approximations needed
|
||||||
|
"""
|
||||||
|
pass
|
||||||
|
|
||||||
|
def _gradients(self, partial):
|
||||||
|
return np.sum(partial)
|
||||||
583
GPy/models/bayesian_gplvm.py
Normal file
583
GPy/models/bayesian_gplvm.py
Normal file
|
|
@ -0,0 +1,583 @@
|
||||||
|
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..core import SparseGP
|
||||||
|
from ..likelihoods import Gaussian
|
||||||
|
from .. import kern
|
||||||
|
import itertools
|
||||||
|
from matplotlib.colors import colorConverter
|
||||||
|
from GPy.inference.optimization import SCG
|
||||||
|
from GPy.util import plot_latent
|
||||||
|
from GPy.models.gplvm import GPLVM
|
||||||
|
|
||||||
|
class BayesianGPLVM(SparseGP, GPLVM):
|
||||||
|
"""
|
||||||
|
Bayesian Gaussian Process Latent Variable Model
|
||||||
|
|
||||||
|
:param Y: observed data (np.ndarray) or GPy.likelihood
|
||||||
|
:type Y: np.ndarray| GPy.likelihood instance
|
||||||
|
:param input_dim: latent dimensionality
|
||||||
|
:type input_dim: int
|
||||||
|
:param init: initialisation method for the latent space
|
||||||
|
:type init: 'PCA'|'random'
|
||||||
|
|
||||||
|
"""
|
||||||
|
def __init__(self, likelihood_or_Y, input_dim, X=None, X_variance=None, init='PCA', M=10,
|
||||||
|
Z=None, kernel=None, oldpsave=10, _debug=False,
|
||||||
|
**kwargs):
|
||||||
|
if type(likelihood_or_Y) is np.ndarray:
|
||||||
|
likelihood = Gaussian(likelihood_or_Y)
|
||||||
|
else:
|
||||||
|
likelihood = likelihood_or_Y
|
||||||
|
|
||||||
|
if X == None:
|
||||||
|
X = self.initialise_latent(init, input_dim, likelihood.Y)
|
||||||
|
self.init = init
|
||||||
|
|
||||||
|
if X_variance is None:
|
||||||
|
X_variance = np.clip((np.ones_like(X) * 0.5) + .01 * np.random.randn(*X.shape), 0.001, 1)
|
||||||
|
|
||||||
|
if Z is None:
|
||||||
|
Z = np.random.permutation(X.copy())[:M]
|
||||||
|
assert Z.shape[1] == X.shape[1]
|
||||||
|
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(input_dim) + kern.white(input_dim)
|
||||||
|
|
||||||
|
self.oldpsave = oldpsave
|
||||||
|
self._oldps = []
|
||||||
|
self._debug = _debug
|
||||||
|
|
||||||
|
if self._debug:
|
||||||
|
self.f_call = 0
|
||||||
|
self._count = itertools.count()
|
||||||
|
self._savedklll = []
|
||||||
|
self._savedparams = []
|
||||||
|
self._savedgradients = []
|
||||||
|
self._savederrors = []
|
||||||
|
self._savedpsiKmm = []
|
||||||
|
self._savedABCD = []
|
||||||
|
|
||||||
|
SparseGP.__init__(self, X, likelihood, kernel, Z=Z, X_variance=X_variance, **kwargs)
|
||||||
|
self._set_params(self._get_params())
|
||||||
|
|
||||||
|
@property
|
||||||
|
def oldps(self):
|
||||||
|
return self._oldps
|
||||||
|
@oldps.setter
|
||||||
|
def oldps(self, p):
|
||||||
|
if len(self._oldps) == (self.oldpsave + 1):
|
||||||
|
self._oldps.pop()
|
||||||
|
# if len(self._oldps) == 0 or not np.any([np.any(np.abs(p - op) > 1e-5) for op in self._oldps]):
|
||||||
|
self._oldps.insert(0, p.copy())
|
||||||
|
|
||||||
|
def _get_param_names(self):
|
||||||
|
X_names = sum([['X_%i_%i' % (n, q) for q in range(self.input_dim)] for n in range(self.N)], [])
|
||||||
|
S_names = sum([['X_variance_%i_%i' % (n, q) for q in range(self.input_dim)] for n in range(self.N)], [])
|
||||||
|
return (X_names + S_names + SparseGP._get_param_names(self))
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
"""
|
||||||
|
Horizontally stacks the parameters in order to present them to the optimizer.
|
||||||
|
The resulting 1-input_dim array has this structure:
|
||||||
|
|
||||||
|
===============================================================
|
||||||
|
| mu | S | Z | theta | beta |
|
||||||
|
===============================================================
|
||||||
|
|
||||||
|
"""
|
||||||
|
x = np.hstack((self.X.flatten(), self.X_variance.flatten(), SparseGP._get_params(self)))
|
||||||
|
return x
|
||||||
|
|
||||||
|
def _clipped(self, x):
|
||||||
|
return x # np.clip(x, -1e300, 1e300)
|
||||||
|
|
||||||
|
def _set_params(self, x, save_old=True, save_count=0):
|
||||||
|
# try:
|
||||||
|
x = self._clipped(x)
|
||||||
|
N, input_dim = self.N, self.input_dim
|
||||||
|
self.X = x[:self.X.size].reshape(N, input_dim).copy()
|
||||||
|
self.X_variance = x[(N * input_dim):(2 * N * input_dim)].reshape(N, input_dim).copy()
|
||||||
|
SparseGP._set_params(self, x[(2 * N * input_dim):])
|
||||||
|
# self.oldps = x
|
||||||
|
# except (LinAlgError, FloatingPointError, ZeroDivisionError):
|
||||||
|
# print "\rWARNING: Caught LinAlgError, continueing without setting "
|
||||||
|
# if self._debug:
|
||||||
|
# self._savederrors.append(self.f_call)
|
||||||
|
# if save_count > 10:
|
||||||
|
# raise
|
||||||
|
# self._set_params(self.oldps[-1], save_old=False, save_count=save_count + 1)
|
||||||
|
|
||||||
|
def dKL_dmuS(self):
|
||||||
|
dKL_dS = (1. - (1. / (self.X_variance))) * 0.5
|
||||||
|
dKL_dmu = self.X
|
||||||
|
return dKL_dmu, dKL_dS
|
||||||
|
|
||||||
|
def dL_dmuS(self):
|
||||||
|
dL_dmu_psi0, dL_dS_psi0 = self.kern.dpsi0_dmuS(self.dL_dpsi0, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dmu_psi1, dL_dS_psi1 = self.kern.dpsi1_dmuS(self.dL_dpsi1, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dmu_psi2, dL_dS_psi2 = self.kern.dpsi2_dmuS(self.dL_dpsi2, self.Z, self.X, self.X_variance)
|
||||||
|
dL_dmu = dL_dmu_psi0 + dL_dmu_psi1 + dL_dmu_psi2
|
||||||
|
dL_dS = dL_dS_psi0 + dL_dS_psi1 + dL_dS_psi2
|
||||||
|
|
||||||
|
return dL_dmu, dL_dS
|
||||||
|
|
||||||
|
def KL_divergence(self):
|
||||||
|
var_mean = np.square(self.X).sum()
|
||||||
|
var_S = np.sum(self.X_variance - np.log(self.X_variance))
|
||||||
|
return 0.5 * (var_mean + var_S) - 0.5 * self.input_dim * self.N
|
||||||
|
|
||||||
|
def log_likelihood(self):
|
||||||
|
ll = SparseGP.log_likelihood(self)
|
||||||
|
kl = self.KL_divergence()
|
||||||
|
|
||||||
|
# if ll < -2E4:
|
||||||
|
# ll = -2E4 + np.random.randn()
|
||||||
|
# if kl > 5E4:
|
||||||
|
# kl = 5E4 + np.random.randn()
|
||||||
|
|
||||||
|
if self._debug:
|
||||||
|
self.f_call = self._count.next()
|
||||||
|
if self.f_call % 1 == 0:
|
||||||
|
self._savedklll.append([self.f_call, ll, kl])
|
||||||
|
self._savedparams.append([self.f_call, self._get_params()])
|
||||||
|
self._savedgradients.append([self.f_call, self._log_likelihood_gradients()])
|
||||||
|
self._savedpsiKmm.append([self.f_call, [self.Kmm, self.dL_dKmm]])
|
||||||
|
# sf2 = self.scale_factor ** 2
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
A = -0.5 * self.N * self.input_dim * np.log(2.*np.pi) + 0.5 * np.sum(np.log(self.likelihood.precision)) - 0.5 * np.sum(self.V * self.likelihood.Y)
|
||||||
|
# B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision.flatten() * self.psi0) - np.trace(self.A) * sf2)
|
||||||
|
B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision.flatten() * self.psi0) - np.trace(self.A))
|
||||||
|
else:
|
||||||
|
A = -0.5 * self.N * self.input_dim * (np.log(2.*np.pi) + np.log(self.likelihood._variance)) - 0.5 * self.likelihood.precision * self.likelihood.trYYT
|
||||||
|
# B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision * self.psi0) - np.trace(self.A) * sf2)
|
||||||
|
B = -0.5 * self.input_dim * (np.sum(self.likelihood.precision * self.psi0) - np.trace(self.A))
|
||||||
|
C = -self.input_dim * (np.sum(np.log(np.diag(self.LB)))) # + 0.5 * self.num_inducing * np.log(sf2))
|
||||||
|
D = 0.5 * np.sum(np.square(self._LBi_Lmi_psi1V))
|
||||||
|
self._savedABCD.append([self.f_call, A, B, C, D])
|
||||||
|
|
||||||
|
# print "\nkl:", kl, "ll:", ll
|
||||||
|
return ll - kl
|
||||||
|
|
||||||
|
def _log_likelihood_gradients(self):
|
||||||
|
dKL_dmu, dKL_dS = self.dKL_dmuS()
|
||||||
|
dL_dmu, dL_dS = self.dL_dmuS()
|
||||||
|
# TODO: find way to make faster
|
||||||
|
|
||||||
|
d_dmu = (dL_dmu - dKL_dmu).flatten()
|
||||||
|
d_dS = (dL_dS - dKL_dS).flatten()
|
||||||
|
# TEST KL: ====================
|
||||||
|
# d_dmu = (dKL_dmu).flatten()
|
||||||
|
# d_dS = (dKL_dS).flatten()
|
||||||
|
# ========================
|
||||||
|
# TEST L: ====================
|
||||||
|
# d_dmu = (dL_dmu).flatten()
|
||||||
|
# d_dS = (dL_dS).flatten()
|
||||||
|
# ========================
|
||||||
|
self.dbound_dmuS = np.hstack((d_dmu, d_dS))
|
||||||
|
self.dbound_dZtheta = SparseGP._log_likelihood_gradients(self)
|
||||||
|
return self._clipped(np.hstack((self.dbound_dmuS.flatten(), self.dbound_dZtheta)))
|
||||||
|
|
||||||
|
def plot_latent(self, *args, **kwargs):
|
||||||
|
return plot_latent.plot_latent_indices(self, *args, **kwargs)
|
||||||
|
|
||||||
|
def do_test_latents(self, Y):
|
||||||
|
"""
|
||||||
|
Compute the latent representation for a set of new points Y
|
||||||
|
|
||||||
|
Notes:
|
||||||
|
This will only work with a univariate Gaussian likelihood (for now)
|
||||||
|
"""
|
||||||
|
assert not self.likelihood.is_heteroscedastic
|
||||||
|
N_test = Y.shape[0]
|
||||||
|
input_dim = self.Z.shape[1]
|
||||||
|
means = np.zeros((N_test, input_dim))
|
||||||
|
covars = np.zeros((N_test, input_dim))
|
||||||
|
|
||||||
|
dpsi0 = -0.5 * self.input_dim * self.likelihood.precision
|
||||||
|
dpsi2 = self.dL_dpsi2[0][None, :, :] # TODO: this may change if we ignore het. likelihoods
|
||||||
|
V = self.likelihood.precision * Y
|
||||||
|
dpsi1 = np.dot(self.Cpsi1V, V.T)
|
||||||
|
|
||||||
|
start = np.zeros(self.input_dim * 2)
|
||||||
|
|
||||||
|
for n, dpsi1_n in enumerate(dpsi1.T[:, :, None]):
|
||||||
|
args = (self.kern, self.Z, dpsi0, dpsi1_n, dpsi2)
|
||||||
|
xopt, fopt, neval, status = SCG(f=latent_cost, gradf=latent_grad, x=start, optargs=args, display=False)
|
||||||
|
|
||||||
|
mu, log_S = xopt.reshape(2, 1, -1)
|
||||||
|
means[n] = mu[0].copy()
|
||||||
|
covars[n] = np.exp(log_S[0]).copy()
|
||||||
|
|
||||||
|
return means, covars
|
||||||
|
|
||||||
|
|
||||||
|
def plot_X_1d(self, fignum=None, ax=None, colors=None):
|
||||||
|
"""
|
||||||
|
Plot latent space X in 1D:
|
||||||
|
|
||||||
|
-if fig is given, create input_dim subplots in fig and plot in these
|
||||||
|
-if ax is given plot input_dim 1D latent space plots of X into each `axis`
|
||||||
|
-if neither fig nor ax is given create a figure with fignum and plot in there
|
||||||
|
|
||||||
|
colors:
|
||||||
|
colors of different latent space dimensions input_dim
|
||||||
|
"""
|
||||||
|
import pylab
|
||||||
|
if ax is None:
|
||||||
|
fig = pylab.figure(num=fignum, figsize=(8, min(12, (2 * self.X.shape[1]))))
|
||||||
|
if colors is None:
|
||||||
|
colors = pylab.gca()._get_lines.color_cycle
|
||||||
|
pylab.clf()
|
||||||
|
else:
|
||||||
|
colors = iter(colors)
|
||||||
|
plots = []
|
||||||
|
x = np.arange(self.X.shape[0])
|
||||||
|
for i in range(self.X.shape[1]):
|
||||||
|
if ax is None:
|
||||||
|
a = fig.add_subplot(self.X.shape[1], 1, i + 1)
|
||||||
|
elif isinstance(ax, (tuple, list)):
|
||||||
|
a = ax[i]
|
||||||
|
else:
|
||||||
|
raise ValueError("Need one ax per latent dimnesion input_dim")
|
||||||
|
a.plot(self.X, c='k', alpha=.3)
|
||||||
|
plots.extend(a.plot(x, self.X.T[i], c=colors.next(), label=r"$\mathbf{{X_{{{}}}}}$".format(i)))
|
||||||
|
a.fill_between(x,
|
||||||
|
self.X.T[i] - 2 * np.sqrt(self.X_variance.T[i]),
|
||||||
|
self.X.T[i] + 2 * np.sqrt(self.X_variance.T[i]),
|
||||||
|
facecolor=plots[-1].get_color(),
|
||||||
|
alpha=.3)
|
||||||
|
a.legend(borderaxespad=0.)
|
||||||
|
a.set_xlim(x.min(), x.max())
|
||||||
|
if i < self.X.shape[1] - 1:
|
||||||
|
a.set_xticklabels('')
|
||||||
|
pylab.draw()
|
||||||
|
fig.tight_layout(h_pad=.01) # , rect=(0, 0, 1, .95))
|
||||||
|
return fig
|
||||||
|
|
||||||
|
def __getstate__(self):
|
||||||
|
return (self.likelihood, self.input_dim, self.X, self.X_variance,
|
||||||
|
self.init, self.num_inducing, self.Z, self.kern,
|
||||||
|
self.oldpsave, self._debug)
|
||||||
|
|
||||||
|
def __setstate__(self, state):
|
||||||
|
self.__init__(*state)
|
||||||
|
|
||||||
|
def _debug_filter_params(self, x):
|
||||||
|
start, end = 0, self.X.size,
|
||||||
|
X = x[start:end].reshape(self.N, self.input_dim)
|
||||||
|
start, end = end, end + self.X_variance.size
|
||||||
|
X_v = x[start:end].reshape(self.N, self.input_dim)
|
||||||
|
start, end = end, end + (self.num_inducing * self.input_dim)
|
||||||
|
Z = x[start:end].reshape(self.num_inducing, self.input_dim)
|
||||||
|
start, end = end, end + self.input_dim
|
||||||
|
theta = x[start:]
|
||||||
|
return X, X_v, Z, theta
|
||||||
|
|
||||||
|
|
||||||
|
def _debug_get_axis(self, figs):
|
||||||
|
if figs[-1].axes:
|
||||||
|
ax1 = figs[-1].axes[0]
|
||||||
|
ax1.cla()
|
||||||
|
else:
|
||||||
|
ax1 = figs[-1].add_subplot(111)
|
||||||
|
return ax1
|
||||||
|
|
||||||
|
def _debug_plot(self):
|
||||||
|
assert self._debug, "must enable _debug, to debug-plot"
|
||||||
|
import pylab
|
||||||
|
# from mpl_toolkits.mplot3d import Axes3D
|
||||||
|
figs = [pylab.figure('BGPLVM DEBUG', figsize=(12, 4))]
|
||||||
|
# fig.clf()
|
||||||
|
|
||||||
|
# log like
|
||||||
|
# splotshape = (6, 4)
|
||||||
|
# ax1 = pylab.subplot2grid(splotshape, (0, 0), 1, 4)
|
||||||
|
ax1 = self._debug_get_axis(figs)
|
||||||
|
ax1.text(.5, .5, "Optimization", alpha=.3, transform=ax1.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
kllls = np.array(self._savedklll)
|
||||||
|
LL, = ax1.plot(kllls[:, 0], kllls[:, 1] - kllls[:, 2], '-', label=r'$\log p(\mathbf{Y})$', mew=1.5)
|
||||||
|
KL, = ax1.plot(kllls[:, 0], kllls[:, 2], '-', label=r'$\mathcal{KL}(p||q)$', mew=1.5)
|
||||||
|
L, = ax1.plot(kllls[:, 0], kllls[:, 1], '-', label=r'$L$', mew=1.5) # \mathds{E}_{q(\mathbf{X})}[p(\mathbf{Y|X})\frac{p(\mathbf{X})}{q(\mathbf{X})}]
|
||||||
|
|
||||||
|
param_dict = dict(self._savedparams)
|
||||||
|
gradient_dict = dict(self._savedgradients)
|
||||||
|
# kmm_dict = dict(self._savedpsiKmm)
|
||||||
|
iters = np.array(param_dict.keys())
|
||||||
|
ABCD_dict = np.array(self._savedABCD)
|
||||||
|
self.showing = 0
|
||||||
|
|
||||||
|
# ax2 = pylab.subplot2grid(splotshape, (1, 0), 2, 4)
|
||||||
|
figs.append(pylab.figure("BGPLVM DEBUG X", figsize=(12, 4)))
|
||||||
|
ax2 = self._debug_get_axis(figs)
|
||||||
|
ax2.text(.5, .5, r"$\mathbf{X}$", alpha=.5, transform=ax2.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
figs[-1].canvas.draw()
|
||||||
|
figs[-1].tight_layout(rect=(0, 0, 1, .86))
|
||||||
|
# ax3 = pylab.subplot2grid(splotshape, (3, 0), 2, 4, sharex=ax2)
|
||||||
|
figs.append(pylab.figure("BGPLVM DEBUG S", figsize=(12, 4)))
|
||||||
|
ax3 = self._debug_get_axis(figs)
|
||||||
|
ax3.text(.5, .5, r"$\mathbf{S}$", alpha=.5, transform=ax3.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
figs[-1].canvas.draw()
|
||||||
|
figs[-1].tight_layout(rect=(0, 0, 1, .86))
|
||||||
|
# ax4 = pylab.subplot2grid(splotshape, (5, 0), 2, 2)
|
||||||
|
figs.append(pylab.figure("BGPLVM DEBUG Z", figsize=(6, 4)))
|
||||||
|
ax4 = self._debug_get_axis(figs)
|
||||||
|
ax4.text(.5, .5, r"$\mathbf{Z}$", alpha=.5, transform=ax4.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
figs[-1].canvas.draw()
|
||||||
|
figs[-1].tight_layout(rect=(0, 0, 1, .86))
|
||||||
|
# ax5 = pylab.subplot2grid(splotshape, (5, 2), 2, 2)
|
||||||
|
figs.append(pylab.figure("BGPLVM DEBUG theta", figsize=(6, 4)))
|
||||||
|
ax5 = self._debug_get_axis(figs)
|
||||||
|
ax5.text(.5, .5, r"${\theta}$", alpha=.5, transform=ax5.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
figs[-1].canvas.draw()
|
||||||
|
figs[-1].tight_layout(rect=(.15, 0, 1, .86))
|
||||||
|
# figs.append(pylab.figure("BGPLVM DEBUG Kmm", figsize=(12, 6)))
|
||||||
|
# fig = figs[-1]
|
||||||
|
# ax6 = fig.add_subplot(121)
|
||||||
|
# ax6.text(.5, .5, r"${\mathbf{K}_{mm}}$", color='magenta', alpha=.5, transform=ax6.transAxes,
|
||||||
|
# ha='center', va='center')
|
||||||
|
# ax7 = fig.add_subplot(122)
|
||||||
|
# ax7.text(.5, .5, r"${\frac{dL}{dK_{mm}}}$", color='magenta', alpha=.5, transform=ax7.transAxes,
|
||||||
|
# ha='center', va='center')
|
||||||
|
figs.append(pylab.figure("BGPLVM DEBUG Kmm", figsize=(12, 6)))
|
||||||
|
fig = figs[-1]
|
||||||
|
ax8 = fig.add_subplot(121)
|
||||||
|
ax8.text(.5, .5, r"${\mathbf{A,B,C,input_dim}}$", color='k', alpha=.5, transform=ax8.transAxes,
|
||||||
|
ha='center', va='center')
|
||||||
|
ax8.plot(ABCD_dict[:, 0], ABCD_dict[:, 1], label='A')
|
||||||
|
ax8.plot(ABCD_dict[:, 0], ABCD_dict[:, 2], label='B')
|
||||||
|
ax8.plot(ABCD_dict[:, 0], ABCD_dict[:, 3], label='C')
|
||||||
|
ax8.plot(ABCD_dict[:, 0], ABCD_dict[:, 4], label='input_dim')
|
||||||
|
ax8.legend()
|
||||||
|
figs[-1].canvas.draw()
|
||||||
|
figs[-1].tight_layout(rect=(.15, 0, 1, .86))
|
||||||
|
|
||||||
|
X, S, Z, theta = self._debug_filter_params(param_dict[self.showing])
|
||||||
|
Xg, Sg, Zg, thetag = self._debug_filter_params(gradient_dict[self.showing])
|
||||||
|
# Xg, Sg, Zg, thetag = -Xg, -Sg, -Zg, -thetag
|
||||||
|
|
||||||
|
quiver_units = 'xy'
|
||||||
|
quiver_scale = 1
|
||||||
|
quiver_scale_units = 'xy'
|
||||||
|
Xlatentplts = ax2.plot(X, ls="-", marker="x")
|
||||||
|
colors = colorConverter.to_rgba_array([p.get_color() for p in Xlatentplts], .4)
|
||||||
|
Ulatent = np.zeros_like(X)
|
||||||
|
xlatent = np.tile(np.arange(0, X.shape[0])[:, None], X.shape[1])
|
||||||
|
Xlatentgrads = ax2.quiver(xlatent, X, Ulatent, Xg, color=colors,
|
||||||
|
units=quiver_units, scale_units=quiver_scale_units,
|
||||||
|
scale=quiver_scale)
|
||||||
|
|
||||||
|
Slatentplts = ax3.plot(S, ls="-", marker="x")
|
||||||
|
Slatentgrads = ax3.quiver(xlatent, S, Ulatent, Sg, color=colors,
|
||||||
|
units=quiver_units, scale_units=quiver_scale_units,
|
||||||
|
scale=quiver_scale)
|
||||||
|
ax3.set_ylim(0, 1.)
|
||||||
|
|
||||||
|
xZ = np.tile(np.arange(0, Z.shape[0])[:, None], Z.shape[1])
|
||||||
|
UZ = np.zeros_like(Z)
|
||||||
|
Zplts = ax4.plot(Z, ls="-", marker="x")
|
||||||
|
Zgrads = ax4.quiver(xZ, Z, UZ, Zg, color=colors,
|
||||||
|
units=quiver_units, scale_units=quiver_scale_units,
|
||||||
|
scale=quiver_scale)
|
||||||
|
|
||||||
|
xtheta = np.arange(len(theta))
|
||||||
|
Utheta = np.zeros_like(theta)
|
||||||
|
thetaplts = ax5.bar(xtheta - .4, theta, color=colors)
|
||||||
|
thetagrads = ax5.quiver(xtheta, theta, Utheta, thetag, color=colors,
|
||||||
|
units=quiver_units, scale_units=quiver_scale_units,
|
||||||
|
scale=quiver_scale,
|
||||||
|
edgecolors=('k',), linewidths=[1])
|
||||||
|
pylab.setp(thetaplts, zorder=0)
|
||||||
|
pylab.setp(thetagrads, zorder=10)
|
||||||
|
ax5.set_xticks(np.arange(len(theta)))
|
||||||
|
ax5.set_xticklabels(self._get_param_names()[-len(theta):], rotation=17)
|
||||||
|
|
||||||
|
# imkmm = ax6.imshow(kmm_dict[self.showing][0])
|
||||||
|
# from mpl_toolkits.axes_grid1 import make_axes_locatable
|
||||||
|
# divider = make_axes_locatable(ax6)
|
||||||
|
# caxkmm = divider.append_axes("right", "5%", pad="1%")
|
||||||
|
# cbarkmm = pylab.colorbar(imkmm, cax=caxkmm)
|
||||||
|
#
|
||||||
|
# imkmmdl = ax7.imshow(kmm_dict[self.showing][1])
|
||||||
|
# divider = make_axes_locatable(ax7)
|
||||||
|
# caxkmmdl = divider.append_axes("right", "5%", pad="1%")
|
||||||
|
# cbarkmmdl = pylab.colorbar(imkmmdl, cax=caxkmmdl)
|
||||||
|
|
||||||
|
# input_dimleg = ax1.legend(Xlatentplts, [r"$input_dim_{}$".format(i + 1) for i in range(self.input_dim)],
|
||||||
|
# loc=3, ncol=self.input_dim, bbox_to_anchor=(0, 1.15, 1, 1.15),
|
||||||
|
# borderaxespad=0, mode="expand")
|
||||||
|
ax2.legend(Xlatentplts, [r"$input_dim_{}$".format(i + 1) for i in range(self.input_dim)],
|
||||||
|
loc=3, ncol=self.input_dim, bbox_to_anchor=(0, 1.1, 1, 1.1),
|
||||||
|
borderaxespad=0, mode="expand")
|
||||||
|
ax3.legend(Xlatentplts, [r"$input_dim_{}$".format(i + 1) for i in range(self.input_dim)],
|
||||||
|
loc=3, ncol=self.input_dim, bbox_to_anchor=(0, 1.1, 1, 1.1),
|
||||||
|
borderaxespad=0, mode="expand")
|
||||||
|
ax4.legend(Xlatentplts, [r"$input_dim_{}$".format(i + 1) for i in range(self.input_dim)],
|
||||||
|
loc=3, ncol=self.input_dim, bbox_to_anchor=(0, 1.1, 1, 1.1),
|
||||||
|
borderaxespad=0, mode="expand")
|
||||||
|
ax5.legend(Xlatentplts, [r"$input_dim_{}$".format(i + 1) for i in range(self.input_dim)],
|
||||||
|
loc=3, ncol=self.input_dim, bbox_to_anchor=(0, 1.1, 1, 1.1),
|
||||||
|
borderaxespad=0, mode="expand")
|
||||||
|
Lleg = ax1.legend()
|
||||||
|
Lleg.draggable()
|
||||||
|
# ax1.add_artist(input_dimleg)
|
||||||
|
|
||||||
|
indicatorKL, = ax1.plot(kllls[self.showing, 0], kllls[self.showing, 2], 'o', c=KL.get_color())
|
||||||
|
indicatorLL, = ax1.plot(kllls[self.showing, 0], kllls[self.showing, 1] - kllls[self.showing, 2], 'o', c=LL.get_color())
|
||||||
|
indicatorL, = ax1.plot(kllls[self.showing, 0], kllls[self.showing, 1], 'o', c=L.get_color())
|
||||||
|
# for err in self._savederrors:
|
||||||
|
# if err < kllls.shape[0]:
|
||||||
|
# ax1.scatter(kllls[err, 0], kllls[err, 2], s=50, marker=(5, 2), c=KL.get_color())
|
||||||
|
# ax1.scatter(kllls[err, 0], kllls[err, 1] - kllls[err, 2], s=50, marker=(5, 2), c=LL.get_color())
|
||||||
|
# ax1.scatter(kllls[err, 0], kllls[err, 1], s=50, marker=(5, 2), c=L.get_color())
|
||||||
|
|
||||||
|
# try:
|
||||||
|
# for f in figs:
|
||||||
|
# f.canvas.draw()
|
||||||
|
# f.tight_layout(box=(0, .15, 1, .9))
|
||||||
|
# # pylab.draw()
|
||||||
|
# # pylab.tight_layout(box=(0, .1, 1, .9))
|
||||||
|
# except:
|
||||||
|
# pass
|
||||||
|
|
||||||
|
# parameter changes
|
||||||
|
# ax2 = pylab.subplot2grid((4, 1), (1, 0), 3, 1, projection='3d')
|
||||||
|
button_options = [0, 0] # [0]: clicked -- [1]: dragged
|
||||||
|
|
||||||
|
def update_plots(event):
|
||||||
|
if button_options[0] and not button_options[1]:
|
||||||
|
# event.button, event.x, event.y, event.xdata, event.ydata)
|
||||||
|
tmp = np.abs(iters - event.xdata)
|
||||||
|
closest_hit = iters[tmp == tmp.min()][0]
|
||||||
|
|
||||||
|
if closest_hit != self.showing:
|
||||||
|
self.showing = closest_hit
|
||||||
|
# print closest_hit, iters, event.xdata
|
||||||
|
|
||||||
|
indicatorLL.set_data(self.showing, kllls[self.showing, 1] - kllls[self.showing, 2])
|
||||||
|
indicatorKL.set_data(self.showing, kllls[self.showing, 2])
|
||||||
|
indicatorL.set_data(self.showing, kllls[self.showing, 1])
|
||||||
|
|
||||||
|
X, S, Z, theta = self._debug_filter_params(param_dict[self.showing])
|
||||||
|
Xg, Sg, Zg, thetag = self._debug_filter_params(gradient_dict[self.showing])
|
||||||
|
# Xg, Sg, Zg, thetag = -Xg, -Sg, -Zg, -thetag
|
||||||
|
|
||||||
|
for i, Xlatent in enumerate(Xlatentplts):
|
||||||
|
Xlatent.set_ydata(X[:, i])
|
||||||
|
Xlatentgrads.set_offsets(np.array([xlatent.ravel(), X.ravel()]).T)
|
||||||
|
Xlatentgrads.set_UVC(Ulatent, Xg)
|
||||||
|
|
||||||
|
for i, Slatent in enumerate(Slatentplts):
|
||||||
|
Slatent.set_ydata(S[:, i])
|
||||||
|
Slatentgrads.set_offsets(np.array([xlatent.ravel(), S.ravel()]).T)
|
||||||
|
Slatentgrads.set_UVC(Ulatent, Sg)
|
||||||
|
|
||||||
|
for i, Zlatent in enumerate(Zplts):
|
||||||
|
Zlatent.set_ydata(Z[:, i])
|
||||||
|
Zgrads.set_offsets(np.array([xZ.ravel(), Z.ravel()]).T)
|
||||||
|
Zgrads.set_UVC(UZ, Zg)
|
||||||
|
|
||||||
|
for p, t in zip(thetaplts, theta):
|
||||||
|
p.set_height(t)
|
||||||
|
thetagrads.set_offsets(np.array([xtheta.ravel(), theta.ravel()]).T)
|
||||||
|
thetagrads.set_UVC(Utheta, thetag)
|
||||||
|
|
||||||
|
# imkmm.set_data(kmm_dict[self.showing][0])
|
||||||
|
# imkmm.autoscale()
|
||||||
|
# cbarkmm.update_normal(imkmm)
|
||||||
|
#
|
||||||
|
# imkmmdl.set_data(kmm_dict[self.showing][1])
|
||||||
|
# imkmmdl.autoscale()
|
||||||
|
# cbarkmmdl.update_normal(imkmmdl)
|
||||||
|
|
||||||
|
ax2.relim()
|
||||||
|
# ax3.relim()
|
||||||
|
ax4.relim()
|
||||||
|
ax5.relim()
|
||||||
|
ax2.autoscale()
|
||||||
|
# ax3.autoscale()
|
||||||
|
ax4.autoscale()
|
||||||
|
ax5.autoscale()
|
||||||
|
|
||||||
|
[fig.canvas.draw() for fig in figs]
|
||||||
|
button_options[0] = 0
|
||||||
|
button_options[1] = 0
|
||||||
|
|
||||||
|
def onclick(event):
|
||||||
|
if event.inaxes is ax1 and event.button == 1:
|
||||||
|
button_options[0] = 1
|
||||||
|
def motion(event):
|
||||||
|
if button_options[0]:
|
||||||
|
button_options[1] = 1
|
||||||
|
|
||||||
|
cidr = figs[0].canvas.mpl_connect('button_release_event', update_plots)
|
||||||
|
cidp = figs[0].canvas.mpl_connect('button_press_event', onclick)
|
||||||
|
cidd = figs[0].canvas.mpl_connect('motion_notify_event', motion)
|
||||||
|
|
||||||
|
return ax1, ax2, ax3, ax4, ax5 # , ax6, ax7
|
||||||
|
|
||||||
|
|
||||||
|
|
||||||
|
|
||||||
|
def latent_cost_and_grad(mu_S, kern, Z, dL_dpsi0, dL_dpsi1, dL_dpsi2):
|
||||||
|
"""
|
||||||
|
objective function for fitting the latent variables for test points
|
||||||
|
(negative log-likelihood: should be minimised!)
|
||||||
|
"""
|
||||||
|
mu, log_S = mu_S.reshape(2, 1, -1)
|
||||||
|
S = np.exp(log_S)
|
||||||
|
|
||||||
|
psi0 = kern.psi0(Z, mu, S)
|
||||||
|
psi1 = kern.psi1(Z, mu, S)
|
||||||
|
psi2 = kern.psi2(Z, mu, S)
|
||||||
|
|
||||||
|
lik = dL_dpsi0 * psi0 + np.dot(dL_dpsi1.flatten(), psi1.flatten()) + np.dot(dL_dpsi2.flatten(), psi2.flatten()) - 0.5 * np.sum(np.square(mu) + S) + 0.5 * np.sum(log_S)
|
||||||
|
|
||||||
|
mu0, S0 = kern.dpsi0_dmuS(dL_dpsi0, Z, mu, S)
|
||||||
|
mu1, S1 = kern.dpsi1_dmuS(dL_dpsi1, Z, mu, S)
|
||||||
|
mu2, S2 = kern.dpsi2_dmuS(dL_dpsi2, Z, mu, S)
|
||||||
|
|
||||||
|
dmu = mu0 + mu1 + mu2 - mu
|
||||||
|
# dS = S0 + S1 + S2 -0.5 + .5/S
|
||||||
|
dlnS = S * (S0 + S1 + S2 - 0.5) + .5
|
||||||
|
return -lik, -np.hstack((dmu.flatten(), dlnS.flatten()))
|
||||||
|
|
||||||
|
def latent_cost(mu_S, kern, Z, dL_dpsi0, dL_dpsi1, dL_dpsi2):
|
||||||
|
"""
|
||||||
|
objective function for fitting the latent variables (negative log-likelihood: should be minimised!)
|
||||||
|
This is the same as latent_cost_and_grad but only for the objective
|
||||||
|
"""
|
||||||
|
mu, log_S = mu_S.reshape(2, 1, -1)
|
||||||
|
S = np.exp(log_S)
|
||||||
|
|
||||||
|
psi0 = kern.psi0(Z, mu, S)
|
||||||
|
psi1 = kern.psi1(Z, mu, S)
|
||||||
|
psi2 = kern.psi2(Z, mu, S)
|
||||||
|
|
||||||
|
lik = dL_dpsi0 * psi0 + np.dot(dL_dpsi1.flatten(), psi1.flatten()) + np.dot(dL_dpsi2.flatten(), psi2.flatten()) - 0.5 * np.sum(np.square(mu) + S) + 0.5 * np.sum(log_S)
|
||||||
|
return -float(lik)
|
||||||
|
|
||||||
|
def latent_grad(mu_S, kern, Z, dL_dpsi0, dL_dpsi1, dL_dpsi2):
|
||||||
|
"""
|
||||||
|
This is the same as latent_cost_and_grad but only for the grad
|
||||||
|
"""
|
||||||
|
mu, log_S = mu_S.reshape(2, 1, -1)
|
||||||
|
S = np.exp(log_S)
|
||||||
|
|
||||||
|
mu0, S0 = kern.dpsi0_dmuS(dL_dpsi0, Z, mu, S)
|
||||||
|
mu1, S1 = kern.dpsi1_dmuS(dL_dpsi1, Z, mu, S)
|
||||||
|
mu2, S2 = kern.dpsi2_dmuS(dL_dpsi2, Z, mu, S)
|
||||||
|
|
||||||
|
dmu = mu0 + mu1 + mu2 - mu
|
||||||
|
# dS = S0 + S1 + S2 -0.5 + .5/S
|
||||||
|
dlnS = S * (S0 + S1 + S2 - 0.5) + .5
|
||||||
|
|
||||||
|
return -np.hstack((dmu.flatten(), dlnS.flatten()))
|
||||||
|
|
||||||
|
|
||||||
252
GPy/models/fitc.py
Normal file
252
GPy/models/fitc.py
Normal file
|
|
@ -0,0 +1,252 @@
|
||||||
|
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
import pylab as pb
|
||||||
|
from ..util.linalg import mdot, jitchol, chol_inv, tdot, symmetrify, pdinv
|
||||||
|
from ..util.plot import gpplot
|
||||||
|
from .. import kern
|
||||||
|
from scipy import stats, linalg
|
||||||
|
from GPy.core.sparse_gp import SparseGP
|
||||||
|
|
||||||
|
def backsub_both_sides(L, X):
|
||||||
|
""" Return L^-T * X * L^-1, assumuing X is symmetrical and L is lower cholesky"""
|
||||||
|
tmp, _ = linalg.lapack.flapack.dtrtrs(L, np.asfortranarray(X), lower=1, trans=1)
|
||||||
|
return linalg.lapack.flapack.dtrtrs(L, np.asfortranarray(tmp.T), lower=1, trans=1)[0].T
|
||||||
|
|
||||||
|
class FITC(SparseGP):
|
||||||
|
|
||||||
|
def __init__(self, X, likelihood, kernel, Z, X_variance=None, normalize_X=False):
|
||||||
|
super(FITC, self).__init__(X, likelihood, kernel, normalize_X=normalize_X)
|
||||||
|
|
||||||
|
def update_likelihood_approximation(self):
|
||||||
|
"""
|
||||||
|
Approximates a non-gaussian likelihood using Expectation Propagation
|
||||||
|
|
||||||
|
For a Gaussian (or direct: TODO) likelihood, no iteration is required:
|
||||||
|
this function does nothing
|
||||||
|
|
||||||
|
Diag(Knn - Qnn) is added to the noise term to use the tools already implemented in SparseGP.
|
||||||
|
The true precison is now 'true_precision' not 'precision'.
|
||||||
|
"""
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError, "FITC approximation not implemented for uncertain inputs"
|
||||||
|
else:
|
||||||
|
self.likelihood.fit_FITC(self.Kmm, self.psi1, self.psi0)
|
||||||
|
self._set_params(self._get_params()) # update the GP
|
||||||
|
|
||||||
|
def _computations(self):
|
||||||
|
|
||||||
|
# factor Kmm
|
||||||
|
self.Lm = jitchol(self.Kmm)
|
||||||
|
self.Lmi, info = linalg.lapack.flapack.dtrtrs(self.Lm, np.eye(self.num_inducing), lower=1)
|
||||||
|
Lmipsi1 = np.dot(self.Lmi, self.psi1)
|
||||||
|
self.Qnn = np.dot(Lmipsi1.T, Lmipsi1).copy()
|
||||||
|
self.Diag0 = self.psi0 - np.diag(self.Qnn)
|
||||||
|
self.beta_star = self.likelihood.precision / (1. + self.likelihood.precision * self.Diag0[:, None]) # Includes Diag0 in the precision
|
||||||
|
self.V_star = self.beta_star * self.likelihood.Y
|
||||||
|
|
||||||
|
# The rather complex computations of self.A
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError
|
||||||
|
else:
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
assert self.likelihood.input_dim == 1
|
||||||
|
tmp = self.psi1 * (np.sqrt(self.beta_star.flatten().reshape(1, self.N)))
|
||||||
|
tmp, _ = linalg.lapack.flapack.dtrtrs(self.Lm, np.asfortranarray(tmp), lower=1)
|
||||||
|
self.A = tdot(tmp)
|
||||||
|
|
||||||
|
# factor B
|
||||||
|
self.B = np.eye(self.num_inducing) + self.A
|
||||||
|
self.LB = jitchol(self.B)
|
||||||
|
self.LBi = chol_inv(self.LB)
|
||||||
|
self.psi1V = np.dot(self.psi1, self.V_star)
|
||||||
|
|
||||||
|
Lmi_psi1V, info = linalg.lapack.flapack.dtrtrs(self.Lm, np.asfortranarray(self.psi1V), lower=1, trans=0)
|
||||||
|
self._LBi_Lmi_psi1V, _ = linalg.lapack.flapack.dtrtrs(self.LB, np.asfortranarray(Lmi_psi1V), lower=1, trans=0)
|
||||||
|
|
||||||
|
Kmmipsi1 = np.dot(self.Lmi.T, Lmipsi1)
|
||||||
|
b_psi1_Ki = self.beta_star * Kmmipsi1.T
|
||||||
|
Ki_pbp_Ki = np.dot(Kmmipsi1, b_psi1_Ki)
|
||||||
|
Kmmi = np.dot(self.Lmi.T, self.Lmi)
|
||||||
|
LBiLmi = np.dot(self.LBi, self.Lmi)
|
||||||
|
LBL_inv = np.dot(LBiLmi.T, LBiLmi)
|
||||||
|
VVT = np.outer(self.V_star, self.V_star)
|
||||||
|
VV_p_Ki = np.dot(VVT, Kmmipsi1.T)
|
||||||
|
Ki_pVVp_Ki = np.dot(Kmmipsi1, VV_p_Ki)
|
||||||
|
psi1beta = self.psi1 * self.beta_star.T
|
||||||
|
H = self.Kmm + mdot(self.psi1, psi1beta.T)
|
||||||
|
LH = jitchol(H)
|
||||||
|
LHi = chol_inv(LH)
|
||||||
|
Hi = np.dot(LHi.T, LHi)
|
||||||
|
|
||||||
|
betapsi1TLmiLBi = np.dot(psi1beta.T, LBiLmi.T)
|
||||||
|
alpha = np.array([np.dot(a.T, a) for a in betapsi1TLmiLBi])[:, None]
|
||||||
|
gamma_1 = mdot(VVT, self.psi1.T, Hi)
|
||||||
|
pHip = mdot(self.psi1.T, Hi, self.psi1)
|
||||||
|
gamma_2 = mdot(self.beta_star * pHip, self.V_star)
|
||||||
|
gamma_3 = self.V_star * gamma_2
|
||||||
|
|
||||||
|
self._dL_dpsi0 = -0.5 * self.beta_star # dA_dpsi0: logdet(self.beta_star)
|
||||||
|
self._dL_dpsi0 += .5 * self.V_star ** 2 # dA_psi0: yT*beta_star*y
|
||||||
|
self._dL_dpsi0 += .5 * alpha # dC_dpsi0
|
||||||
|
self._dL_dpsi0 += 0.5 * mdot(self.beta_star * pHip, self.V_star) ** 2 - self.V_star * mdot(self.V_star.T, pHip * self.beta_star).T # dD_dpsi0
|
||||||
|
|
||||||
|
self._dL_dpsi1 = b_psi1_Ki.copy() # dA_dpsi1: logdet(self.beta_star)
|
||||||
|
self._dL_dpsi1 += -np.dot(psi1beta.T, LBL_inv) # dC_dpsi1
|
||||||
|
self._dL_dpsi1 += gamma_1 - mdot(psi1beta.T, Hi, self.psi1, gamma_1) # dD_dpsi1
|
||||||
|
|
||||||
|
self._dL_dKmm = -0.5 * np.dot(Kmmipsi1, b_psi1_Ki) # dA_dKmm: logdet(self.beta_star)
|
||||||
|
self._dL_dKmm += .5 * (LBL_inv - Kmmi) + mdot(LBL_inv, psi1beta, Kmmipsi1.T) # dC_dKmm
|
||||||
|
self._dL_dKmm += -.5 * mdot(Hi, self.psi1, gamma_1) # dD_dKmm
|
||||||
|
|
||||||
|
self._dpsi1_dtheta = 0
|
||||||
|
self._dpsi1_dX = 0
|
||||||
|
self._dKmm_dtheta = 0
|
||||||
|
self._dKmm_dX = 0
|
||||||
|
|
||||||
|
self._dpsi1_dX_jkj = 0
|
||||||
|
self._dpsi1_dtheta_jkj = 0
|
||||||
|
|
||||||
|
for i, V_n, alpha_n, gamma_n, gamma_k in zip(range(self.N), self.V_star, alpha, gamma_2, gamma_3):
|
||||||
|
K_pp_K = np.dot(Kmmipsi1[:, i:(i + 1)], Kmmipsi1[:, i:(i + 1)].T)
|
||||||
|
|
||||||
|
# Diag_dpsi1 = Diag_dA_dpsi1: yT*beta_star*y + Diag_dC_dpsi1 +Diag_dD_dpsi1
|
||||||
|
_dpsi1 = (-V_n ** 2 - alpha_n + 2.*gamma_k - gamma_n ** 2) * Kmmipsi1.T[i:(i + 1), :]
|
||||||
|
|
||||||
|
# Diag_dKmm = Diag_dA_dKmm: yT*beta_star*y +Diag_dC_dKmm +Diag_dD_dKmm
|
||||||
|
_dKmm = .5 * (V_n ** 2 + alpha_n + gamma_n ** 2 - 2.*gamma_k) * K_pp_K # Diag_dD_dKmm
|
||||||
|
|
||||||
|
self._dpsi1_dtheta += self.kern.dK_dtheta(_dpsi1, self.X[i:i + 1, :], self.Z)
|
||||||
|
self._dKmm_dtheta += self.kern.dK_dtheta(_dKmm, self.Z)
|
||||||
|
|
||||||
|
self._dKmm_dX += 2.*self.kern.dK_dX(_dKmm , self.Z)
|
||||||
|
self._dpsi1_dX += self.kern.dK_dX(_dpsi1.T, self.Z, self.X[i:i + 1, :])
|
||||||
|
|
||||||
|
# the partial derivative vector for the likelihood
|
||||||
|
if self.likelihood.Nparams == 0:
|
||||||
|
# save computation here.
|
||||||
|
self.partial_for_likelihood = None
|
||||||
|
elif self.likelihood.is_heteroscedastic:
|
||||||
|
raise NotImplementedError, "heteroscedatic derivates not implemented"
|
||||||
|
else:
|
||||||
|
# likelihood is not heterscedatic
|
||||||
|
dbstar_dnoise = self.likelihood.precision * (self.beta_star ** 2 * self.Diag0[:, None] - self.beta_star)
|
||||||
|
Lmi_psi1 = mdot(self.Lmi, self.psi1)
|
||||||
|
LBiLmipsi1 = np.dot(self.LBi, Lmi_psi1)
|
||||||
|
aux_0 = np.dot(self._LBi_Lmi_psi1V.T, LBiLmipsi1)
|
||||||
|
aux_1 = self.likelihood.Y.T * np.dot(self._LBi_Lmi_psi1V.T, LBiLmipsi1)
|
||||||
|
aux_2 = np.dot(LBiLmipsi1.T, self._LBi_Lmi_psi1V)
|
||||||
|
|
||||||
|
dA_dnoise = 0.5 * self.input_dim * (dbstar_dnoise / self.beta_star).sum() - 0.5 * self.input_dim * np.sum(self.likelihood.Y ** 2 * dbstar_dnoise)
|
||||||
|
dC_dnoise = -0.5 * np.sum(mdot(self.LBi.T, self.LBi, Lmi_psi1) * Lmi_psi1 * dbstar_dnoise.T)
|
||||||
|
dC_dnoise = -0.5 * np.sum(mdot(self.LBi.T, self.LBi, Lmi_psi1) * Lmi_psi1 * dbstar_dnoise.T)
|
||||||
|
|
||||||
|
dD_dnoise_1 = mdot(self.V_star * LBiLmipsi1.T, LBiLmipsi1 * dbstar_dnoise.T * self.likelihood.Y.T)
|
||||||
|
alpha = mdot(LBiLmipsi1, self.V_star)
|
||||||
|
alpha_ = mdot(LBiLmipsi1.T, alpha)
|
||||||
|
dD_dnoise_2 = -0.5 * self.input_dim * np.sum(alpha_ ** 2 * dbstar_dnoise)
|
||||||
|
|
||||||
|
dD_dnoise_1 = mdot(self.V_star.T, self.psi1.T, self.Lmi.T, self.LBi.T, self.LBi, self.Lmi, self.psi1, dbstar_dnoise * self.likelihood.Y)
|
||||||
|
dD_dnoise_2 = 0.5 * mdot(self.V_star.T, self.psi1.T, Hi, self.psi1, dbstar_dnoise * self.psi1.T, Hi, self.psi1, self.V_star)
|
||||||
|
dD_dnoise = dD_dnoise_1 + dD_dnoise_2
|
||||||
|
|
||||||
|
self.partial_for_likelihood = dA_dnoise + dC_dnoise + dD_dnoise
|
||||||
|
|
||||||
|
def log_likelihood(self):
|
||||||
|
""" Compute the (lower bound on the) log marginal likelihood """
|
||||||
|
A = -0.5 * self.N * self.input_dim * np.log(2.*np.pi) + 0.5 * np.sum(np.log(self.beta_star)) - 0.5 * np.sum(self.V_star * self.likelihood.Y)
|
||||||
|
C = -self.input_dim * (np.sum(np.log(np.diag(self.LB))))
|
||||||
|
D = 0.5 * np.sum(np.square(self._LBi_Lmi_psi1V))
|
||||||
|
return A + C + D
|
||||||
|
|
||||||
|
def _log_likelihood_gradients(self):
|
||||||
|
pass
|
||||||
|
return np.hstack((self.dL_dZ().flatten(), self.dL_dtheta(), self.likelihood._gradients(partial=self.partial_for_likelihood)))
|
||||||
|
|
||||||
|
def dL_dtheta(self):
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError, "FITC approximation not implemented for uncertain inputs"
|
||||||
|
else:
|
||||||
|
dL_dtheta = self.kern.dKdiag_dtheta(self._dL_dpsi0, self.X)
|
||||||
|
dL_dtheta += self.kern.dK_dtheta(self._dL_dpsi1, self.X, self.Z)
|
||||||
|
dL_dtheta += self.kern.dK_dtheta(self._dL_dKmm, X=self.Z)
|
||||||
|
dL_dtheta += self._dKmm_dtheta
|
||||||
|
dL_dtheta += self._dpsi1_dtheta
|
||||||
|
return dL_dtheta
|
||||||
|
|
||||||
|
def dL_dZ(self):
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError, "FITC approximation not implemented for uncertain inputs"
|
||||||
|
else:
|
||||||
|
dL_dZ = self.kern.dK_dX(self._dL_dpsi1.T, self.Z, self.X)
|
||||||
|
dL_dZ += 2. * self.kern.dK_dX(self._dL_dKmm, X=self.Z)
|
||||||
|
dL_dZ += self._dpsi1_dX
|
||||||
|
dL_dZ += self._dKmm_dX
|
||||||
|
return dL_dZ
|
||||||
|
|
||||||
|
def _raw_predict(self, Xnew, which_parts, full_cov=False):
|
||||||
|
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
Iplus_Dprod_i = 1. / (1. + self.Diag0 * self.likelihood.precision.flatten())
|
||||||
|
self.Diag = self.Diag0 * Iplus_Dprod_i
|
||||||
|
self.P = Iplus_Dprod_i[:, None] * self.psi1.T
|
||||||
|
self.RPT0 = np.dot(self.Lmi, self.psi1)
|
||||||
|
self.L = np.linalg.cholesky(np.eye(self.num_inducing) + np.dot(self.RPT0, ((1. - Iplus_Dprod_i) / self.Diag0)[:, None] * self.RPT0.T))
|
||||||
|
self.R, info = linalg.flapack.dtrtrs(self.L, self.Lmi, lower=1)
|
||||||
|
self.RPT = np.dot(self.R, self.P.T)
|
||||||
|
self.Sigma = np.diag(self.Diag) + np.dot(self.RPT.T, self.RPT)
|
||||||
|
self.w = self.Diag * self.likelihood.v_tilde
|
||||||
|
self.Gamma = np.dot(self.R.T, np.dot(self.RPT, self.likelihood.v_tilde))
|
||||||
|
self.mu = self.w + np.dot(self.P, self.Gamma)
|
||||||
|
|
||||||
|
"""
|
||||||
|
Make a prediction for the generalized FITC model
|
||||||
|
|
||||||
|
Arguments
|
||||||
|
---------
|
||||||
|
X : Input prediction data - Nx1 numpy array (floats)
|
||||||
|
"""
|
||||||
|
# q(u|f) = N(u| R0i*mu_u*f, R0i*C*R0i.T)
|
||||||
|
|
||||||
|
# Ci = I + (RPT0)Di(RPT0).T
|
||||||
|
# C = I - [RPT0] * (input_dim+[RPT0].T*[RPT0])^-1*[RPT0].T
|
||||||
|
# = I - [RPT0] * (input_dim + self.Qnn)^-1 * [RPT0].T
|
||||||
|
# = I - [RPT0] * (U*U.T)^-1 * [RPT0].T
|
||||||
|
# = I - V.T * V
|
||||||
|
U = np.linalg.cholesky(np.diag(self.Diag0) + self.Qnn)
|
||||||
|
V, info = linalg.flapack.dtrtrs(U, self.RPT0.T, lower=1)
|
||||||
|
C = np.eye(self.num_inducing) - np.dot(V.T, V)
|
||||||
|
mu_u = np.dot(C, self.RPT0) * (1. / self.Diag0[None, :])
|
||||||
|
# self.C = C
|
||||||
|
# self.RPT0 = np.dot(self.R0,self.Knm.T) P0.T
|
||||||
|
# self.mu_u = mu_u
|
||||||
|
# self.U = U
|
||||||
|
# q(u|y) = N(u| R0i*mu_H,R0i*Sigma_H*R0i.T)
|
||||||
|
mu_H = np.dot(mu_u, self.mu)
|
||||||
|
self.mu_H = mu_H
|
||||||
|
Sigma_H = C + np.dot(mu_u, np.dot(self.Sigma, mu_u.T))
|
||||||
|
# q(f_star|y) = N(f_star|mu_star,sigma2_star)
|
||||||
|
Kx = self.kern.K(self.Z, Xnew, which_parts=which_parts)
|
||||||
|
KR0T = np.dot(Kx.T, self.Lmi.T)
|
||||||
|
mu_star = np.dot(KR0T, mu_H)
|
||||||
|
if full_cov:
|
||||||
|
Kxx = self.kern.K(Xnew, which_parts=which_parts)
|
||||||
|
var = Kxx + np.dot(KR0T, np.dot(Sigma_H - np.eye(self.num_inducing), KR0T.T))
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.Kdiag(Xnew, which_parts=which_parts)
|
||||||
|
var = (Kxx + np.sum(KR0T.T * np.dot(Sigma_H - np.eye(self.num_inducing), KR0T.T), 0))[:, None]
|
||||||
|
return mu_star[:, None], var
|
||||||
|
else:
|
||||||
|
raise NotImplementedError, "homoscedastic fitc not implemented"
|
||||||
|
"""
|
||||||
|
Kx = self.kern.K(self.Z, Xnew)
|
||||||
|
mu = mdot(Kx.T, self.C/self.scale_factor, self.psi1V)
|
||||||
|
if full_cov:
|
||||||
|
Kxx = self.kern.K(Xnew)
|
||||||
|
var = Kxx - mdot(Kx.T, (self.Kmmi - self.C/self.scale_factor**2), Kx) #NOTE this won't work for plotting
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.Kdiag(Xnew)
|
||||||
|
var = Kxx - np.sum(Kx*np.dot(self.Kmmi - self.C/self.scale_factor**2, Kx),0)
|
||||||
|
return mu,var[:,None]
|
||||||
|
"""
|
||||||
221
GPy/models/generalized_fitc.py
Normal file
221
GPy/models/generalized_fitc.py
Normal file
|
|
@ -0,0 +1,221 @@
|
||||||
|
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
import pylab as pb
|
||||||
|
from ..util.linalg import mdot, jitchol, chol_inv, pdinv, trace_dot
|
||||||
|
from ..util.plot import gpplot
|
||||||
|
from .. import kern
|
||||||
|
from scipy import stats, linalg
|
||||||
|
from ..core import SparseGP
|
||||||
|
|
||||||
|
def backsub_both_sides(L,X):
|
||||||
|
""" Return L^-T * X * L^-1, assumuing X is symmetrical and L is lower cholesky"""
|
||||||
|
tmp,_ = linalg.lapack.flapack.dtrtrs(L,np.asfortranarray(X),lower=1,trans=1)
|
||||||
|
return linalg.lapack.flapack.dtrtrs(L,np.asfortranarray(tmp.T),lower=1,trans=1)[0].T
|
||||||
|
|
||||||
|
|
||||||
|
class GeneralizedFITC(SparseGP):
|
||||||
|
"""
|
||||||
|
Naish-Guzman, A. and Holden, S. (2008) implemantation of EP with FITC.
|
||||||
|
|
||||||
|
:param X: inputs
|
||||||
|
:type X: np.ndarray (N x input_dim)
|
||||||
|
:param likelihood: a likelihood instance, containing the observed data
|
||||||
|
:type likelihood: GPy.likelihood.(Gaussian | EP)
|
||||||
|
:param kernel : the kernel/covariance function. See link kernels
|
||||||
|
:type kernel: a GPy kernel
|
||||||
|
:param X_variance: The variance in the measurements of X (Gaussian variance)
|
||||||
|
:type X_variance: np.ndarray (N x input_dim) | None
|
||||||
|
:param Z: inducing inputs (optional, see note)
|
||||||
|
:type Z: np.ndarray (num_inducing x input_dim) | None
|
||||||
|
:param num_inducing : Number of inducing points (optional, default 10. Ignored if Z is not None)
|
||||||
|
:type num_inducing: int
|
||||||
|
:param normalize_(X|Y) : whether to normalize the data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_(X|Y): bool
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self, X, likelihood, kernel, Z, X_variance=None, normalize_X=False):
|
||||||
|
self.Z = Z
|
||||||
|
self.num_inducing = self.Z.shape[0]
|
||||||
|
self.true_precision = likelihood.precision
|
||||||
|
|
||||||
|
super(GeneralizedFITC, self).__init__(X, likelihood, kernel=kernel, Z=self.Z, X_variance=X_variance, normalize_X=normalize_X)
|
||||||
|
self._set_params(self._get_params())
|
||||||
|
|
||||||
|
def _set_params(self, p):
|
||||||
|
self.Z = p[:self.num_inducing*self.input_dim].reshape(self.num_inducing, self.input_dim)
|
||||||
|
self.kern._set_params(p[self.Z.size:self.Z.size+self.kern.Nparam])
|
||||||
|
self.likelihood._set_params(p[self.Z.size+self.kern.Nparam:])
|
||||||
|
self._compute_kernel_matrices()
|
||||||
|
self._computations()
|
||||||
|
self._FITC_computations()
|
||||||
|
|
||||||
|
def update_likelihood_approximation(self):
|
||||||
|
"""
|
||||||
|
Approximates a non-gaussian likelihood using Expectation Propagation
|
||||||
|
|
||||||
|
For a Gaussian (or direct: TODO) likelihood, no iteration is required:
|
||||||
|
this function does nothing
|
||||||
|
|
||||||
|
Diag(Knn - Qnn) is added to the noise term to use the tools already implemented in SparseGP.
|
||||||
|
The true precison is now 'true_precision' not 'precision'.
|
||||||
|
"""
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError, "FITC approximation not implemented for uncertain inputs"
|
||||||
|
else:
|
||||||
|
self.likelihood.fit_FITC(self.Kmm,self.psi1,self.psi0)
|
||||||
|
self.true_precision = self.likelihood.precision # Save the true precision
|
||||||
|
self.likelihood.precision = self.true_precision/(1. + self.true_precision*self.Diag0[:,None]) # Add the diagonal element of the FITC approximation
|
||||||
|
self._set_params(self._get_params()) # update the GP
|
||||||
|
|
||||||
|
def _FITC_computations(self):
|
||||||
|
"""
|
||||||
|
FITC approximation doesn't have the correction term in the log-likelihood bound,
|
||||||
|
but adds a diagonal term to the covariance matrix: diag(Knn - Qnn).
|
||||||
|
This function:
|
||||||
|
- computes the FITC diagonal term
|
||||||
|
- removes the extra terms computed in the SparseGP approximation
|
||||||
|
- computes the likelihood gradients wrt the true precision.
|
||||||
|
"""
|
||||||
|
#NOTE the true precison is now 'true_precision' not 'precision'
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
|
||||||
|
# Compute generalized FITC's diagonal term of the covariance
|
||||||
|
self.Lmi,info = linalg.lapack.flapack.dtrtrs(self.Lm,np.eye(self.num_inducing),lower=1)
|
||||||
|
Lmipsi1 = np.dot(self.Lmi,self.psi1)
|
||||||
|
self.Qnn = np.dot(Lmipsi1.T,Lmipsi1)
|
||||||
|
#self.Kmmi, Lm, Lmi, Kmm_logdet = pdinv(self.Kmm)
|
||||||
|
#self.Qnn = mdot(self.psi1.T,self.Kmmi,self.psi1)
|
||||||
|
#a = kj
|
||||||
|
self.Diag0 = self.psi0 - np.diag(self.Qnn)
|
||||||
|
Iplus_Dprod_i = 1./(1.+ self.Diag0 * self.true_precision.flatten())
|
||||||
|
self.Diag = self.Diag0 * Iplus_Dprod_i
|
||||||
|
|
||||||
|
self.P = Iplus_Dprod_i[:,None] * self.psi1.T
|
||||||
|
self.RPT0 = np.dot(self.Lmi,self.psi1)
|
||||||
|
self.L = np.linalg.cholesky(np.eye(self.num_inducing) + np.dot(self.RPT0,((1. - Iplus_Dprod_i)/self.Diag0)[:,None]*self.RPT0.T))
|
||||||
|
self.R,info = linalg.flapack.dtrtrs(self.L,self.Lmi,lower=1)
|
||||||
|
self.RPT = np.dot(self.R,self.P.T)
|
||||||
|
self.Sigma = np.diag(self.Diag) + np.dot(self.RPT.T,self.RPT)
|
||||||
|
self.w = self.Diag * self.likelihood.v_tilde
|
||||||
|
self.Gamma = np.dot(self.R.T, np.dot(self.RPT,self.likelihood.v_tilde))
|
||||||
|
self.mu = self.w + np.dot(self.P,self.Gamma)
|
||||||
|
|
||||||
|
# Remove extra term from dL_dpsi1
|
||||||
|
self.dL_dpsi1 -= mdot(self.Lmi.T,Lmipsi1*self.likelihood.precision.flatten().reshape(1,self.N))
|
||||||
|
#self.Kmmi, Lm, Lmi, Kmm_logdet = pdinv(self.Kmm)
|
||||||
|
#self.dL_dpsi1 -= mdot(self.Kmmi,self.psi1*self.likelihood.precision.flatten().reshape(1,self.N)) #dB
|
||||||
|
|
||||||
|
#########333333
|
||||||
|
#self.Bi, self.LB, self.LBi, self.B_logdet = pdinv(self.B)
|
||||||
|
#########333333
|
||||||
|
|
||||||
|
|
||||||
|
|
||||||
|
else:
|
||||||
|
raise NotImplementedError, "homoscedastic fitc not implemented"
|
||||||
|
# Remove extra term from dL_dpsi1
|
||||||
|
#self.dL_dpsi1 += -mdot(self.Kmmi,self.psi1*self.likelihood.precision) #dB
|
||||||
|
|
||||||
|
sf = self.scale_factor
|
||||||
|
sf2 = sf**2
|
||||||
|
|
||||||
|
# Remove extra term from dL_dKmm
|
||||||
|
self.dL_dKmm += 0.5 * self.input_dim * mdot(self.Lmi.T, self.A, self.Lmi)*sf2 # dB
|
||||||
|
self.dL_dpsi0 = None
|
||||||
|
|
||||||
|
#the partial derivative vector for the likelihood
|
||||||
|
if self.likelihood.Nparams == 0:
|
||||||
|
self.partial_for_likelihood = None
|
||||||
|
elif self.likelihood.is_heteroscedastic:
|
||||||
|
raise NotImplementedError, "heteroscedastic derivates not implemented"
|
||||||
|
else:
|
||||||
|
raise NotImplementedError, "homoscedastic derivatives not implemented"
|
||||||
|
#likelihood is not heterscedatic
|
||||||
|
#self.partial_for_likelihood = - 0.5 * self.N*self.input_dim*self.likelihood.precision + 0.5 * np.sum(np.square(self.likelihood.Y))*self.likelihood.precision**2
|
||||||
|
#self.partial_for_likelihood += 0.5 * self.input_dim * trace_dot(self.Bi,self.A)*self.likelihood.precision
|
||||||
|
#self.partial_for_likelihood += self.likelihood.precision*(0.5*trace_dot(self.psi2_beta_scaled,self.E*sf2) - np.trace(self.Cpsi1VVpsi1))
|
||||||
|
#TODO partial derivative vector for the likelihood not implemented
|
||||||
|
|
||||||
|
def dL_dtheta(self):
|
||||||
|
"""
|
||||||
|
Compute and return the derivative of the log marginal likelihood wrt the parameters of the kernel
|
||||||
|
"""
|
||||||
|
dL_dtheta = self.kern.dK_dtheta(self.dL_dKmm,self.Z)
|
||||||
|
if self.has_uncertain_inputs:
|
||||||
|
raise NotImplementedError, "heteroscedatic derivates not implemented"
|
||||||
|
else:
|
||||||
|
#NOTE in SparseGP this would include the gradient wrt psi0
|
||||||
|
dL_dtheta += self.kern.dK_dtheta(self.dL_dpsi1,self.Z,self.X)
|
||||||
|
return dL_dtheta
|
||||||
|
|
||||||
|
|
||||||
|
def log_likelihood(self):
|
||||||
|
""" Compute the (lower bound on the) log marginal likelihood """
|
||||||
|
sf2 = self.scale_factor**2
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
A = -0.5*self.N*self.input_dim*np.log(2.*np.pi) +0.5*np.sum(np.log(self.likelihood.precision)) -0.5*np.sum(self.V*self.likelihood.Y)
|
||||||
|
else:
|
||||||
|
A = -0.5*self.N*self.input_dim*(np.log(2.*np.pi) + np.log(self.likelihood._variance)) -0.5*self.likelihood.precision*self.likelihood.trYYT
|
||||||
|
C = -self.input_dim * (np.sum(np.log(np.diag(self.LB))) + 0.5*self.num_inducing*np.log(sf2))
|
||||||
|
#C = -0.5*self.input_dim * (self.B_logdet + self.num_inducing*np.log(sf2))
|
||||||
|
D = 0.5*np.sum(np.square(self._LBi_Lmi_psi1V))
|
||||||
|
#self.Cpsi1VVpsi1 = np.dot(self.Cpsi1V,self.psi1V.T)
|
||||||
|
#D_ = 0.5*np.trace(self.Cpsi1VVpsi1)
|
||||||
|
return A+C+D
|
||||||
|
|
||||||
|
def _raw_predict(self, Xnew, which_parts, full_cov=False):
|
||||||
|
if self.likelihood.is_heteroscedastic:
|
||||||
|
"""
|
||||||
|
Make a prediction for the generalized FITC model
|
||||||
|
|
||||||
|
Arguments
|
||||||
|
---------
|
||||||
|
X : Input prediction data - Nx1 numpy array (floats)
|
||||||
|
"""
|
||||||
|
# q(u|f) = N(u| R0i*mu_u*f, R0i*C*R0i.T)
|
||||||
|
|
||||||
|
# Ci = I + (RPT0)Di(RPT0).T
|
||||||
|
# C = I - [RPT0] * (input_dim+[RPT0].T*[RPT0])^-1*[RPT0].T
|
||||||
|
# = I - [RPT0] * (input_dim + self.Qnn)^-1 * [RPT0].T
|
||||||
|
# = I - [RPT0] * (U*U.T)^-1 * [RPT0].T
|
||||||
|
# = I - V.T * V
|
||||||
|
U = np.linalg.cholesky(np.diag(self.Diag0) + self.Qnn)
|
||||||
|
V,info = linalg.flapack.dtrtrs(U,self.RPT0.T,lower=1)
|
||||||
|
C = np.eye(self.num_inducing) - np.dot(V.T,V)
|
||||||
|
mu_u = np.dot(C,self.RPT0)*(1./self.Diag0[None,:])
|
||||||
|
#self.C = C
|
||||||
|
#self.RPT0 = np.dot(self.R0,self.Knm.T) P0.T
|
||||||
|
#self.mu_u = mu_u
|
||||||
|
#self.U = U
|
||||||
|
# q(u|y) = N(u| R0i*mu_H,R0i*Sigma_H*R0i.T)
|
||||||
|
mu_H = np.dot(mu_u,self.mu)
|
||||||
|
self.mu_H = mu_H
|
||||||
|
Sigma_H = C + np.dot(mu_u,np.dot(self.Sigma,mu_u.T))
|
||||||
|
# q(f_star|y) = N(f_star|mu_star,sigma2_star)
|
||||||
|
Kx = self.kern.K(self.Z, Xnew, which_parts=which_parts)
|
||||||
|
KR0T = np.dot(Kx.T,self.Lmi.T)
|
||||||
|
mu_star = np.dot(KR0T,mu_H)
|
||||||
|
if full_cov:
|
||||||
|
Kxx = self.kern.K(Xnew,which_parts=which_parts)
|
||||||
|
var = Kxx + np.dot(KR0T,np.dot(Sigma_H - np.eye(self.num_inducing),KR0T.T))
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.Kdiag(Xnew,which_parts=which_parts)
|
||||||
|
Kxx_ = self.kern.K(Xnew,which_parts=which_parts) # TODO: RA, is this line needed?
|
||||||
|
var_ = Kxx_ + np.dot(KR0T,np.dot(Sigma_H - np.eye(self.num_inducing),KR0T.T)) # TODO: RA, is this line needed?
|
||||||
|
var = (Kxx + np.sum(KR0T.T*np.dot(Sigma_H - np.eye(self.num_inducing),KR0T.T),0))[:,None]
|
||||||
|
return mu_star[:,None],var
|
||||||
|
else:
|
||||||
|
raise NotImplementedError, "homoscedastic fitc not implemented"
|
||||||
|
"""
|
||||||
|
Kx = self.kern.K(self.Z, Xnew)
|
||||||
|
mu = mdot(Kx.T, self.C/self.scale_factor, self.psi1V)
|
||||||
|
if full_cov:
|
||||||
|
Kxx = self.kern.K(Xnew)
|
||||||
|
var = Kxx - mdot(Kx.T, (self.Kmmi - self.C/self.scale_factor**2), Kx) #NOTE this won't work for plotting
|
||||||
|
else:
|
||||||
|
Kxx = self.kern.Kdiag(Xnew)
|
||||||
|
var = Kxx - np.sum(Kx*np.dot(self.Kmmi - self.C/self.scale_factor**2, Kx),0)
|
||||||
|
return mu,var[:,None]
|
||||||
|
"""
|
||||||
41
GPy/models/gp_classification.py
Normal file
41
GPy/models/gp_classification.py
Normal file
|
|
@ -0,0 +1,41 @@
|
||||||
|
# Copyright (c) 2013, Ricardo Andrade
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..core import GP
|
||||||
|
from .. import likelihoods
|
||||||
|
from .. import kern
|
||||||
|
|
||||||
|
class GP_classification(GP):
|
||||||
|
"""
|
||||||
|
Gaussian Process classification
|
||||||
|
|
||||||
|
This is a thin wrapper around the models.GP class, with a set of sensible defalts
|
||||||
|
|
||||||
|
:param X: input observations
|
||||||
|
:param Y: observed values
|
||||||
|
:param likelihood: a GPy likelihood, defaults to Binomial with probit link_function
|
||||||
|
:param kernel: a GPy kernel, defaults to rbf
|
||||||
|
:param normalize_X: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_X: False|True
|
||||||
|
:param normalize_Y: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_Y: False|True
|
||||||
|
|
||||||
|
.. Note:: Multiple independent outputs are allowed using columns of Y
|
||||||
|
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self,X,Y=None,likelihood=None,kernel=None,normalize_X=False,normalize_Y=False):
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(X.shape[1])
|
||||||
|
|
||||||
|
if likelihood is None:
|
||||||
|
distribution = likelihoods.likelihood_functions.Binomial()
|
||||||
|
likelihood = likelihoods.EP(Y, distribution)
|
||||||
|
elif Y is not None:
|
||||||
|
if not all(Y.flatten() == likelihood.data.flatten()):
|
||||||
|
raise Warning, 'likelihood.data and Y are different.'
|
||||||
|
|
||||||
|
GP.__init__(self, X, likelihood, kernel, normalize_X=normalize_X)
|
||||||
|
self._set_params(self._get_params())
|
||||||
35
GPy/models/gp_regression.py
Normal file
35
GPy/models/gp_regression.py
Normal file
|
|
@ -0,0 +1,35 @@
|
||||||
|
# Copyright (c) 2012, James Hensman
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..core import GP
|
||||||
|
from .. import likelihoods
|
||||||
|
from .. import kern
|
||||||
|
|
||||||
|
class GPRegression(GP):
|
||||||
|
"""
|
||||||
|
Gaussian Process model for regression
|
||||||
|
|
||||||
|
This is a thin wrapper around the models.GP class, with a set of sensible defalts
|
||||||
|
|
||||||
|
:param X: input observations
|
||||||
|
:param Y: observed values
|
||||||
|
:param kernel: a GPy kernel, defaults to rbf
|
||||||
|
:param normalize_X: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_X: False|True
|
||||||
|
:param normalize_Y: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_Y: False|True
|
||||||
|
|
||||||
|
.. Note:: Multiple independent outputs are allowed using columns of Y
|
||||||
|
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self,X,Y,kernel=None,normalize_X=False,normalize_Y=False):
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(X.shape[1])
|
||||||
|
|
||||||
|
likelihood = likelihoods.Gaussian(Y,normalize=normalize_Y)
|
||||||
|
|
||||||
|
GP.__init__(self, X, likelihood, kernel, normalize_X=normalize_X)
|
||||||
|
self._set_params(self._get_params())
|
||||||
67
GPy/models/gplvm.py
Normal file
67
GPy/models/gplvm.py
Normal file
|
|
@ -0,0 +1,67 @@
|
||||||
|
### Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
import pylab as pb
|
||||||
|
import sys, pdb
|
||||||
|
from .. import kern
|
||||||
|
from ..core import model
|
||||||
|
from ..util.linalg import pdinv, PCA
|
||||||
|
from ..core import GP
|
||||||
|
from ..likelihoods import Gaussian
|
||||||
|
from .. import util
|
||||||
|
from GPy.util import plot_latent
|
||||||
|
|
||||||
|
|
||||||
|
class GPLVM(GP):
|
||||||
|
"""
|
||||||
|
Gaussian Process Latent Variable Model
|
||||||
|
|
||||||
|
:param Y: observed data
|
||||||
|
:type Y: np.ndarray
|
||||||
|
:param input_dim: latent dimensionality
|
||||||
|
:type input_dim: int
|
||||||
|
:param init: initialisation method for the latent space
|
||||||
|
:type init: 'PCA'|'random'
|
||||||
|
|
||||||
|
"""
|
||||||
|
def __init__(self, Y, input_dim, init='PCA', X = None, kernel=None, normalize_Y=False):
|
||||||
|
if X is None:
|
||||||
|
X = self.initialise_latent(init, input_dim, Y)
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(input_dim, ARD=input_dim>1) + kern.bias(input_dim, np.exp(-2)) + kern.white(input_dim, np.exp(-2))
|
||||||
|
likelihood = Gaussian(Y, normalize=normalize_Y)
|
||||||
|
GP.__init__(self, X, likelihood, kernel, normalize_X=False)
|
||||||
|
self._set_params(self._get_params())
|
||||||
|
|
||||||
|
def initialise_latent(self, init, input_dim, Y):
|
||||||
|
if init == 'PCA':
|
||||||
|
return PCA(Y, input_dim)[0]
|
||||||
|
else:
|
||||||
|
return np.random.randn(Y.shape[0], input_dim)
|
||||||
|
|
||||||
|
def _get_param_names(self):
|
||||||
|
return sum([['X_%i_%i'%(n,q) for q in range(self.input_dim)] for n in range(self.N)],[]) + GP._get_param_names(self)
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
return np.hstack((self.X.flatten(), GP._get_params(self)))
|
||||||
|
|
||||||
|
def _set_params(self,x):
|
||||||
|
self.X = x[:self.N*self.input_dim].reshape(self.N,self.input_dim).copy()
|
||||||
|
GP._set_params(self, x[self.X.size:])
|
||||||
|
|
||||||
|
def _log_likelihood_gradients(self):
|
||||||
|
dL_dX = 2.*self.kern.dK_dX(self.dL_dK,self.X)
|
||||||
|
|
||||||
|
return np.hstack((dL_dX.flatten(),GP._log_likelihood_gradients(self)))
|
||||||
|
|
||||||
|
def plot(self):
|
||||||
|
assert self.likelihood.Y.shape[1]==2
|
||||||
|
pb.scatter(self.likelihood.Y[:,0],self.likelihood.Y[:,1],40,self.X[:,0].copy(),linewidth=0,cmap=pb.cm.jet)
|
||||||
|
Xnew = np.linspace(self.X.min(),self.X.max(),200)[:,None]
|
||||||
|
mu, var, upper, lower = self.predict(Xnew)
|
||||||
|
pb.plot(mu[:,0], mu[:,1],'k',linewidth=1.5)
|
||||||
|
|
||||||
|
def plot_latent(self, *args, **kwargs):
|
||||||
|
return util.plot_latent.plot_latent(self, *args, **kwargs)
|
||||||
50
GPy/models/sparse_gp_classification.py
Normal file
50
GPy/models/sparse_gp_classification.py
Normal file
|
|
@ -0,0 +1,50 @@
|
||||||
|
# Copyright (c) 2013, Ricardo Andrade
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..core import sparse_GP
|
||||||
|
from .. import likelihoods
|
||||||
|
from .. import kern
|
||||||
|
from ..likelihoods import likelihood
|
||||||
|
from GPRegression import GPRegression
|
||||||
|
|
||||||
|
class sparse_GP_classification(sparse_GP):
|
||||||
|
"""
|
||||||
|
sparse Gaussian Process model for classification
|
||||||
|
|
||||||
|
This is a thin wrapper around the sparse_GP class, with a set of sensible defalts
|
||||||
|
|
||||||
|
:param X: input observations
|
||||||
|
:param Y: observed values
|
||||||
|
:param likelihood: a GPy likelihood, defaults to Binomial with probit link_function
|
||||||
|
:param kernel: a GPy kernel, defaults to rbf+white
|
||||||
|
:param normalize_X: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_X: False|True
|
||||||
|
:param normalize_Y: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_Y: False|True
|
||||||
|
:rtype: model object
|
||||||
|
|
||||||
|
.. Note:: Multiple independent outputs are allowed using columns of Y
|
||||||
|
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self, X, Y=None, likelihood=None, kernel=None, normalize_X=False, normalize_Y=False, Z=None, M=10):
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(X.shape[1]) + kern.white(X.shape[1],1e-3)
|
||||||
|
|
||||||
|
if likelihood is None:
|
||||||
|
distribution = likelihoods.likelihood_functions.Binomial()
|
||||||
|
likelihood = likelihoods.EP(Y, distribution)
|
||||||
|
elif Y is not None:
|
||||||
|
if not all(Y.flatten() == likelihood.data.flatten()):
|
||||||
|
raise Warning, 'likelihood.data and Y are different.'
|
||||||
|
|
||||||
|
if Z is None:
|
||||||
|
i = np.random.permutation(X.shape[0])[:M]
|
||||||
|
Z = X[i].copy()
|
||||||
|
else:
|
||||||
|
assert Z.shape[1]==X.shape[1]
|
||||||
|
|
||||||
|
sparse_GP.__init__(self, X, likelihood, kernel, Z=Z, normalize_X=normalize_X)
|
||||||
|
self._set_params(self._get_params())
|
||||||
45
GPy/models/sparse_gp_regression.py
Normal file
45
GPy/models/sparse_gp_regression.py
Normal file
|
|
@ -0,0 +1,45 @@
|
||||||
|
# Copyright (c) 2012, James Hensman
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..core import SparseGP
|
||||||
|
from .. import likelihoods
|
||||||
|
from .. import kern
|
||||||
|
|
||||||
|
class SparseGPRegression(SparseGP):
|
||||||
|
"""
|
||||||
|
Gaussian Process model for regression
|
||||||
|
|
||||||
|
This is a thin wrapper around the SparseGP class, with a set of sensible defalts
|
||||||
|
|
||||||
|
:param X: input observations
|
||||||
|
:param Y: observed values
|
||||||
|
:param kernel: a GPy kernel, defaults to rbf+white
|
||||||
|
:param normalize_X: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_X: False|True
|
||||||
|
:param normalize_Y: whether to normalize the input data before computing (predictions will be in original scales)
|
||||||
|
:type normalize_Y: False|True
|
||||||
|
:rtype: model object
|
||||||
|
|
||||||
|
.. Note:: Multiple independent outputs are allowed using columns of Y
|
||||||
|
|
||||||
|
"""
|
||||||
|
|
||||||
|
def __init__(self, X, Y, kernel=None, normalize_X=False, normalize_Y=False, Z=None, M=10, X_variance=None):
|
||||||
|
# kern defaults to rbf (plus white for stability)
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(X.shape[1]) + kern.white(X.shape[1], 1e-3)
|
||||||
|
|
||||||
|
# Z defaults to a subset of the data
|
||||||
|
if Z is None:
|
||||||
|
i = np.random.permutation(X.shape[0])[:M]
|
||||||
|
Z = X[i].copy()
|
||||||
|
else:
|
||||||
|
assert Z.shape[1] == X.shape[1]
|
||||||
|
|
||||||
|
# likelihood defaults to Gaussian
|
||||||
|
likelihood = likelihoods.Gaussian(Y, normalize=normalize_Y)
|
||||||
|
|
||||||
|
SparseGP.__init__(self, X, likelihood, kernel, Z=Z, normalize_X=normalize_X, X_variance=X_variance)
|
||||||
|
self._set_params(self._get_params())
|
||||||
61
GPy/models/sparse_gplvm.py
Normal file
61
GPy/models/sparse_gplvm.py
Normal file
|
|
@ -0,0 +1,61 @@
|
||||||
|
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
import pylab as pb
|
||||||
|
import sys, pdb
|
||||||
|
from GPy.models.sparse_gp_regression import SparseGPRegression
|
||||||
|
from GPy.models.gplvm import GPLVM
|
||||||
|
# from .. import kern
|
||||||
|
# from ..core import model
|
||||||
|
# from ..util.linalg import pdinv, PCA
|
||||||
|
|
||||||
|
class SparseGPLVM(SparseGPRegression, GPLVM):
|
||||||
|
"""
|
||||||
|
Sparse Gaussian Process Latent Variable Model
|
||||||
|
|
||||||
|
:param Y: observed data
|
||||||
|
:type Y: np.ndarray
|
||||||
|
:param input_dim: latent dimensionality
|
||||||
|
:type input_dim: int
|
||||||
|
:param init: initialisation method for the latent space
|
||||||
|
:type init: 'PCA'|'random'
|
||||||
|
|
||||||
|
"""
|
||||||
|
def __init__(self, Y, input_dim, kernel=None, init='PCA', M=10):
|
||||||
|
X = self.initialise_latent(init, input_dim, Y)
|
||||||
|
SparseGPRegression.__init__(self, X, Y, kernel=kernel, M=M)
|
||||||
|
|
||||||
|
def _get_param_names(self):
|
||||||
|
return (sum([['X_%i_%i' % (n, q) for q in range(self.input_dim)] for n in range(self.N)], [])
|
||||||
|
+ SparseGPRegression._get_param_names(self))
|
||||||
|
|
||||||
|
def _get_params(self):
|
||||||
|
return np.hstack((self.X.flatten(), SparseGPRegression._get_params(self)))
|
||||||
|
|
||||||
|
def _set_params(self, x):
|
||||||
|
self.X = x[:self.X.size].reshape(self.N, self.input_dim).copy()
|
||||||
|
SparseGPRegression._set_params(self, x[self.X.size:])
|
||||||
|
|
||||||
|
def log_likelihood(self):
|
||||||
|
return SparseGPRegression.log_likelihood(self)
|
||||||
|
|
||||||
|
def dL_dX(self):
|
||||||
|
dL_dX = self.kern.dKdiag_dX(self.dL_dpsi0, self.X)
|
||||||
|
dL_dX += self.kern.dK_dX(self.dL_dpsi1.T, self.X, self.Z)
|
||||||
|
|
||||||
|
return dL_dX
|
||||||
|
|
||||||
|
def _log_likelihood_gradients(self):
|
||||||
|
return np.hstack((self.dL_dX().flatten(), SparseGPRegression._log_likelihood_gradients(self)))
|
||||||
|
|
||||||
|
def plot(self):
|
||||||
|
GPLVM.plot(self)
|
||||||
|
# passing Z without a small amout of jitter will induce the white kernel where we don;t want it!
|
||||||
|
mu, var, upper, lower = SparseGPRegression.predict(self, self.Z + np.random.randn(*self.Z.shape) * 0.0001)
|
||||||
|
pb.plot(mu[:, 0] , mu[:, 1], 'ko')
|
||||||
|
|
||||||
|
def plot_latent(self, *args, **kwargs):
|
||||||
|
input_1, input_2 = GPLVM.plot_latent(*args, **kwargs)
|
||||||
|
pb.plot(m.Z[:, input_1], m.Z[:, input_2], '^w')
|
||||||
89
GPy/models/warped_gp.py
Normal file
89
GPy/models/warped_gp.py
Normal file
|
|
@ -0,0 +1,89 @@
|
||||||
|
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
|
||||||
|
# Licensed under the BSD 3-clause license (see LICENSE.txt)
|
||||||
|
|
||||||
|
|
||||||
|
import numpy as np
|
||||||
|
from ..util.warping_functions import *
|
||||||
|
from ..core import GP
|
||||||
|
from .. import likelihoods
|
||||||
|
from GPy.util.warping_functions import TanhWarpingFunction_d
|
||||||
|
from GPy import kern
|
||||||
|
|
||||||
|
class WarpedGP(GP):
|
||||||
|
def __init__(self, X, Y, kernel=None, warping_function=None, warping_terms=3, normalize_X=False, normalize_Y=False):
|
||||||
|
|
||||||
|
if kernel is None:
|
||||||
|
kernel = kern.rbf(X.shape[1])
|
||||||
|
|
||||||
|
if warping_function == None:
|
||||||
|
self.warping_function = TanhWarpingFunction_d(warping_terms)
|
||||||
|
self.warping_params = (np.random.randn(self.warping_function.n_terms * 3 + 1,) * 1)
|
||||||
|
|
||||||
|
Y = self._scale_data(Y)
|
||||||
|
self.has_uncertain_inputs = False
|
||||||
|
self.Y_untransformed = Y.copy()
|
||||||
|
self.predict_in_warped_space = False
|
||||||
|
likelihood = likelihoods.Gaussian(self.transform_data(), normalize=normalize_Y)
|
||||||
|
|
||||||
|
GP.__init__(self, X, likelihood, kernel, normalize_X=normalize_X)
|
||||||
|
self._set_params(self._get_params())
|
||||||
|
|
||||||
|
def _scale_data(self, Y):
|
||||||
|
self._Ymax = Y.max()
|
||||||
|
self._Ymin = Y.min()
|
||||||
|
return (Y - self._Ymin) / (self._Ymax - self._Ymin) - 0.5
|
||||||
|
|
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def _unscale_data(self, Y):
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return (Y + 0.5) * (self._Ymax - self._Ymin) + self._Ymin
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def _set_params(self, x):
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self.warping_params = x[:self.warping_function.num_parameters]
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Y = self.transform_data()
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self.likelihood.set_data(Y)
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GP._set_params(self, x[self.warping_function.num_parameters:].copy())
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def _get_params(self):
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return np.hstack((self.warping_params.flatten().copy(), GP._get_params(self).copy()))
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def _get_param_names(self):
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warping_names = self.warping_function._get_param_names()
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param_names = GP._get_param_names(self)
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return warping_names + param_names
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|
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def transform_data(self):
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Y = self.warping_function.f(self.Y_untransformed.copy(), self.warping_params).copy()
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return Y
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def log_likelihood(self):
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ll = GP.log_likelihood(self)
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jacobian = self.warping_function.fgrad_y(self.Y_untransformed, self.warping_params)
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return ll + np.log(jacobian).sum()
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|
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def _log_likelihood_gradients(self):
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|
ll_grads = GP._log_likelihood_gradients(self)
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|
alpha = np.dot(self.Ki, self.likelihood.Y.flatten())
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|
warping_grads = self.warping_function_gradients(alpha)
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|
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|
warping_grads = np.append(warping_grads[:, :-1].flatten(), warping_grads[0, -1])
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|
return np.hstack((warping_grads.flatten(), ll_grads.flatten()))
|
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|
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|
def warping_function_gradients(self, Kiy):
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|
grad_y = self.warping_function.fgrad_y(self.Y_untransformed, self.warping_params)
|
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|
grad_y_psi, grad_psi = self.warping_function.fgrad_y_psi(self.Y_untransformed, self.warping_params,
|
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|
return_covar_chain=True)
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|
djac_dpsi = ((1.0 / grad_y[:, :, None, None]) * grad_y_psi).sum(axis=0).sum(axis=0)
|
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|
dquad_dpsi = (Kiy[:, None, None, None] * grad_psi).sum(axis=0).sum(axis=0)
|
||||||
|
|
||||||
|
return -dquad_dpsi + djac_dpsi
|
||||||
|
|
||||||
|
def plot_warping(self):
|
||||||
|
self.warping_function.plot(self.warping_params, self.Y_untransformed.min(), self.Y_untransformed.max())
|
||||||
|
|
||||||
|
def _raw_predict(self, *args, **kwargs):
|
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|
mu, var = GP._raw_predict(self, *args, **kwargs)
|
||||||
|
|
||||||
|
if self.predict_in_warped_space:
|
||||||
|
mu = self.warping_function.f_inv(mu, self.warping_params)
|
||||||
|
var = self.warping_function.f_inv(var, self.warping_params)
|
||||||
|
mu = self._unscale_data(mu)
|
||||||
|
return mu, var
|
||||||
Loading…
Add table
Add a link
Reference in a new issue