[basis func kernels] added support for simple basis function kernels, can be easily extended by implementing phi function in BasisFuncKern

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mzwiessele 2015-04-17 12:17:21 +02:00
parent 970df9b88e
commit ce4c14dd5a

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# #Copyright (c) 2012, Max Zwiessele (see AUTHORS.txt).
# Licensed under the BSD 3-clause license (see LICENSE.txt)
from .kern import Kern
from ...core.parameterization.param import Param
from ...core.parameterization.transformations import Logexp
import numpy as np
from ...util.caching import Cache_this
from ...util.linalg import tdot
class BasisFuncKernel(Kern):
def __init__(self, input_dim, variance=1., active_dims=None, name='basis func kernel'):
"""
Abstract superclass for kernels with explicit basis functions for use in GPy.
This class does NOT automatically add an offset to the design matrix phi!
"""
super(BasisFuncKernel, self).__init__(input_dim, active_dims, name)
self.variance = Param('variance', variance, Logexp())
self.link_parameter(self.variance)
def phi(self, X):
raise NotImplementedError('Overwrite this phi function, which maps the input X into the higher dimensional space and forms the design matrix Phi')
def K(self, X, X2=None):
return self.variance * self._K(X, X2)
def Kdiag(self, X, X2=None):
return self.variance * np.diag(self._K(X, X2))
def update_gradients_full(self, dL_dK, X, X2=None):
self.variance.gradient = np.einsum('ij,ij', dL_dK, self._K(X, X2))
def update_gradients_diag(self, dL_dKdiag, X):
self.variance.gradient = np.einsum('i,i', dL_dKdiag, self._K(X))
def concatenate_offset(self, X):
return np.c_[np.ones((X.shape[0], 1)), X]
def posterior_inf(self, X=None, posterior=None):
"""
Do the posterior inference on the parameters given this kernels functions
and the model posterior, which has to be a GPy posterior, usually found at m.posterior, if m is a GPy model.
If not given we search for the the highest parent to be a model, containing the posterior, and for X accordingly.
"""
if X is None:
try:
X = self._highest_parent_.X
except NameError:
raise RuntimeError("This kernel is not part of a model and cannot be used for posterior inference")
if posterior is None:
try:
posterior = self._highest_parent_.posterior
except NameError:
raise RuntimeError("This kernel is not part of a model and cannot be used for posterior inference")
phi = self.phi(X)
return self.variance * phi.T.dot(posterior.woodbury_vector), self.variance * (1 - self.variance * phi.T.dot(posterior.woodbury_inv.dot(phi)))
@Cache_this(limit=3, ignore_args=())
def _K(self, X, X2):
if X2 is None or X is X2:
phi = self.phi(X)
if phi.ndim != 2:
phi = phi[:, None]
return tdot(phi)
else:
phi1 = self.phi(X)
phi2 = self.phi(X2)
if phi1.ndim != 2:
phi1 = phi1[:, None]
phi2 = phi2[:, None]
return phi1.dot(phi2.T)
class LinearSlopeBasisFuncKernel(BasisFuncKernel):
def __init__(self, input_dim, start, stop, variance=1., active_dims=None, name='linear_segment'):
super(LinearSlopeBasisFuncKernel, self).__init__(input_dim, variance, active_dims, name)
self.start = np.array(start)
self.stop = np.array(stop)
@Cache_this(limit=3, ignore_args=())
def phi(self, X):
phi = np.where(X < self.start, self.start, X)
phi = np.where(phi > self.stop, self.stop, phi)
return ((phi-self.start)/(self.stop-self.start))-.5
return self.concatenate_offset(phi) # ((phi-self.start)/(self.stop-self.start))-.5
class ChangePointBasisFuncKernel(BasisFuncKernel):
def __init__(self, input_dim, changepoint, variance=1., active_dims=None, name='changepoint'):
super(ChangePointBasisFuncKernel, self).__init__(input_dim, variance, active_dims, name)
self.changepoint = changepoint
@Cache_this(limit=3, ignore_args=())
def phi(self, X):
return self.concatenate_offset(np.where((X < self.changepoint), -1, 1))
class DomainKernel(LinearSlopeBasisFuncKernel):
@Cache_this(limit=3, ignore_args=())
def phi(self, X):
phi = np.where((X>self.start)*(X<self.stop), 1., 0.)
return phi#((phi-self.start)/(self.stop-self.start))-.5
return self.concatenate_offset(phi) # ((phi-self.start)/(self.stop-self.start))-.5