implement the linear kernel with psi2 format

This commit is contained in:
Zhenwen Dai 2014-08-11 14:57:50 +01:00
parent 6acb9b09b5
commit 703dbcabe2
3 changed files with 89 additions and 175 deletions

View file

@ -103,197 +103,36 @@ class Linear(Kern):
def gradients_X_diag(self, dL_dKdiag, X): def gradients_X_diag(self, dL_dKdiag, X):
return 2.*self.variances*dL_dKdiag[:,None]*X return 2.*self.variances*dL_dKdiag[:,None]*X
def input_sensitivity(self):
return np.ones(self.input_dim) * self.variances
#---------------------------------------# #---------------------------------------#
# PSI statistics # # PSI statistics #
#---------------------------------------# #---------------------------------------#
def psi0(self, Z, variational_posterior): def psi0(self, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[0]
return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[0]
else:
return np.sum(self.variances * self._mu2S(variational_posterior), 1)
def psi1(self, Z, variational_posterior): def psi1(self, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[1]
return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[1]
else:
return self.K(variational_posterior.mean, Z) #the variance, it does nothing
@Cache_this(limit=1) @Cache_this(limit=1)
def psi2(self, Z, variational_posterior): def psi2(self, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[2]
return self.psicomp.psicomputations(self.variances, Z, variational_posterior)[2]
else:
ZA = Z * self.variances
ZAinner = self._ZAinner(variational_posterior, Z)
return np.dot(ZAinner, ZA.T)
def update_gradients_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior): def update_gradients_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): dL_dvar = self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior)[0]
dL_dvar,_,_,_,_ = self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior) if self.ARD:
if self.ARD: self.variances.gradient = dL_dvar
self.variances.gradient = dL_dvar
else:
self.variances.gradient = dL_dvar.sum()
else: else:
#psi1 self.variances.gradient = dL_dvar.sum()
self.update_gradients_full(dL_dpsi1, variational_posterior.mean, Z)
# psi0:
tmp = dL_dpsi0[:, None] * self._mu2S(variational_posterior)
if self.ARD: self.variances.gradient += tmp.sum(0)
else: self.variances.gradient += tmp.sum()
#psi2
if self.ARD:
tmp = dL_dpsi2[:, :, :, None] * (self._ZAinner(variational_posterior, Z)[:, :, None, :] * Z[None, None, :, :])
self.variances.gradient += 2.*tmp.sum(0).sum(0).sum(0)
else:
self.variances.gradient += 2.*np.sum(dL_dpsi2 * self.psi2(Z, variational_posterior))/self.variances
def gradients_Z_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior): def gradients_Z_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): return self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior)[1]
_,dL_dZ,_,_,_ = self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior)
return dL_dZ
else:
#psi1
grad = self.gradients_X(dL_dpsi1.T, Z, variational_posterior.mean)
#psi2
self._weave_dpsi2_dZ(dL_dpsi2, Z, variational_posterior, grad)
return grad
def gradients_qX_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior): def gradients_qX_expectations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, Z, variational_posterior):
if isinstance(variational_posterior, variational.SpikeAndSlabPosterior): return self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior)[2:]
_,_,dL_dmu, dL_dS, dL_dgamma = self.psicomp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, self.variances, Z, variational_posterior)
return dL_dmu, dL_dS, dL_dgamma
else:
grad_mu, grad_S = np.zeros(variational_posterior.mean.shape), np.zeros(variational_posterior.mean.shape)
# psi0
grad_mu += dL_dpsi0[:, None] * (2.0 * variational_posterior.mean * self.variances)
grad_S += dL_dpsi0[:, None] * self.variances
# psi1
grad_mu += (dL_dpsi1[:, :, None] * (Z * self.variances)).sum(1)
# psi2
self._weave_dpsi2_dmuS(dL_dpsi2, Z, variational_posterior, grad_mu, grad_S)
return grad_mu, grad_S
#--------------------------------------------------#
# Helpers for psi statistics #
#--------------------------------------------------#
def _weave_dpsi2_dmuS(self, dL_dpsi2, Z, vp, target_mu, target_S):
# Think N,num_inducing,num_inducing,input_dim
ZA = Z * self.variances
AZZA = ZA.T[:, None, :, None] * ZA[None, :, None, :]
AZZA = AZZA + AZZA.swapaxes(1, 2)
AZZA_2 = AZZA/2.
if config.getboolean('parallel', 'openmp'):
pragma_string = '#pragma omp parallel for private(m,mm,q,qq,factor,tmp)'
header_string = '#include <omp.h>'
weave_options = {'headers' : ['<omp.h>'],
'extra_compile_args': ['-fopenmp -O3'],
'extra_link_args' : ['-lgomp'],
'libraries': ['gomp']}
else:
pragma_string = ''
header_string = ''
weave_options = {'extra_compile_args': ['-O3']}
#Using weave, we can exploit the symmetry of this problem:
code = """
int n, m, mm,q,qq;
double factor,tmp;
%s
for(n=0;n<N;n++){
for(m=0;m<num_inducing;m++){
for(mm=0;mm<=m;mm++){
//add in a factor of 2 for the off-diagonal terms (and then count them only once)
if(m==mm)
factor = dL_dpsi2(n,m,mm);
else
factor = 2.0*dL_dpsi2(n,m,mm);
for(q=0;q<input_dim;q++){
//take the dot product of mu[n,:] and AZZA[:,m,mm,q] TODO: blas!
tmp = 0.0;
for(qq=0;qq<input_dim;qq++){
tmp += mu(n,qq)*AZZA(qq,m,mm,q);
}
target_mu(n,q) += factor*tmp;
target_S(n,q) += factor*AZZA_2(q,m,mm,q);
}
}
}
}
""" % pragma_string
support_code = """
%s
#include <math.h>
""" % header_string
mu = vp.mean
N,num_inducing,input_dim,mu = mu.shape[0],Z.shape[0],mu.shape[1],param_to_array(mu)
weave.inline(code, support_code=support_code,
arg_names=['N','num_inducing','input_dim','mu','AZZA','AZZA_2','target_mu','target_S','dL_dpsi2'],
type_converters=weave.converters.blitz,**weave_options)
def _weave_dpsi2_dZ(self, dL_dpsi2, Z, vp, target):
AZA = self.variances*self._ZAinner(vp, Z)
if config.getboolean('parallel', 'openmp'):
pragma_string = '#pragma omp parallel for private(n,mm,q)'
header_string = '#include <omp.h>'
weave_options = {'headers' : ['<omp.h>'],
'extra_compile_args': ['-fopenmp -O3'],
'extra_link_args' : ['-lgomp'],
'libraries': ['gomp']}
else:
pragma_string = ''
header_string = ''
weave_options = {'extra_compile_args': ['-O3']}
code="""
int n,m,mm,q;
%s
for(m=0;m<num_inducing;m++){
for(q=0;q<input_dim;q++){
for(mm=0;mm<num_inducing;mm++){
for(n=0;n<N;n++){
target(m,q) += 2*dL_dpsi2(n,m,mm)*AZA(n,mm,q);
}
}
}
}
""" % pragma_string
support_code = """
%s
#include <math.h>
""" % header_string
N,num_inducing,input_dim = vp.mean.shape[0],Z.shape[0],vp.mean.shape[1]
mu = param_to_array(vp.mean)
weave.inline(code, support_code=support_code,
arg_names=['N','num_inducing','input_dim','AZA','target','dL_dpsi2'],
type_converters=weave.converters.blitz,**weave_options)
@Cache_this(limit=1, ignore_args=(0,))
def _mu2S(self, vp):
return np.square(vp.mean) + vp.variance
@Cache_this(limit=1)
def _ZAinner(self, vp, Z):
ZA = Z*self.variances
inner = (vp.mean[:, None, :] * vp.mean[:, :, None])
diag_indices = np.diag_indices(vp.mean.shape[1], 2)
inner[:, diag_indices[0], diag_indices[1]] += vp.variance
return np.dot(ZA, inner).swapaxes(0, 1) # NOTE: self.ZAinner \in [num_inducing x num_data x input_dim]!
def input_sensitivity(self):
return np.ones(self.input_dim) * self.variances
class LinearFull(Kern): class LinearFull(Kern):
def __init__(self, input_dim, rank, W=None, kappa=None, active_dims=None, name='linear_full'): def __init__(self, input_dim, rank, W=None, kappa=None, active_dims=None, name='linear_full'):

View file

@ -7,6 +7,7 @@ from ....core.parameterization import variational
import rbf_psi_comp import rbf_psi_comp
import ssrbf_psi_comp import ssrbf_psi_comp
import sslinear_psi_comp import sslinear_psi_comp
import linear_psi_comp
class PSICOMP_RBF(Pickleable): class PSICOMP_RBF(Pickleable):
@ -33,7 +34,7 @@ class PSICOMP_Linear(Pickleable):
@Cache_this(limit=2, ignore_args=(0,)) @Cache_this(limit=2, ignore_args=(0,))
def psicomputations(self, variance, Z, variational_posterior): def psicomputations(self, variance, Z, variational_posterior):
if isinstance(variational_posterior, variational.NormalPosterior): if isinstance(variational_posterior, variational.NormalPosterior):
raise NotImplementedError return linear_psi_comp.psicomputations(variance, Z, variational_posterior)
elif isinstance(variational_posterior, variational.SpikeAndSlabPosterior): elif isinstance(variational_posterior, variational.SpikeAndSlabPosterior):
return sslinear_psi_comp.psicomputations(variance, Z, variational_posterior) return sslinear_psi_comp.psicomputations(variance, Z, variational_posterior)
else: else:
@ -42,7 +43,7 @@ class PSICOMP_Linear(Pickleable):
@Cache_this(limit=2, ignore_args=(0,1,2,3)) @Cache_this(limit=2, ignore_args=(0,1,2,3))
def psiDerivativecomputations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior): def psiDerivativecomputations(self, dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior):
if isinstance(variational_posterior, variational.NormalPosterior): if isinstance(variational_posterior, variational.NormalPosterior):
raise NotImplementedError return linear_psi_comp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior)
elif isinstance(variational_posterior, variational.SpikeAndSlabPosterior): elif isinstance(variational_posterior, variational.SpikeAndSlabPosterior):
return sslinear_psi_comp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior) return sslinear_psi_comp.psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior)
else: else:

View file

@ -0,0 +1,74 @@
# Copyright (c) 2012, GPy authors (see AUTHORS.txt).
# Licensed under the BSD 3-clause license (see LICENSE.txt)
"""
The package for the Psi statistics computation of the linear kernel for Bayesian GPLVM
"""
import numpy as np
def psicomputations(variance, Z, variational_posterior):
"""
Compute psi-statistics for ss-linear kernel
"""
# here are the "statistics" for psi0, psi1 and psi2
# Produced intermediate results:
# psi0 N
# psi1 NxM
# psi2 MxM
mu = variational_posterior.mean
S = variational_posterior.variance
psi0 = np.einsum('q,nq->n',variance,np.square(mu)+S)
psi1 = np.einsum('q,mq,nq->nm',variance,Z,mu)
tmp = np.einsum('q,mq,nq->nm',variance,Z,mu)
psi2 = np.einsum('q,mq,oq,nq->mo',np.square(variance),Z,Z,S) + np.einsum('nm,no->mo',tmp,tmp)
return psi0, psi1, psi2
def psiDerivativecomputations(dL_dpsi0, dL_dpsi1, dL_dpsi2, variance, Z, variational_posterior):
mu = variational_posterior.mean
S = variational_posterior.variance
dL_dvar, dL_dmu, dL_dS, dL_dZ = _psi2computations(dL_dpsi2, variance, Z, mu, S)
# Compute for psi0 and psi1
mu2S = np.square(mu)+S
dL_dvar += np.einsum('n,nq->q',dL_dpsi0,mu2S) + np.einsum('nm,mq,nq->q',dL_dpsi1,Z,mu)
dL_dmu += np.einsum('n,q,nq->nq',dL_dpsi0,2.*variance,mu) + np.einsum('nm,q,mq->nq',dL_dpsi1,variance,Z)
dL_dS += np.einsum('n,q->nq',dL_dpsi0,variance)
dL_dZ += np.einsum('nm,q,nq->mq',dL_dpsi1, variance,mu)
return dL_dvar, dL_dZ, dL_dmu, dL_dS
def _psi2computations(dL_dpsi2, variance, Z, mu, S):
"""
Z - MxQ
mu - NxQ
S - NxQ
gamma - NxQ
"""
# here are the "statistics" for psi1 and psi2
# Produced intermediate results:
# _psi2_dvariance Q
# _psi2_dZ MxQ
# _psi2_dmu NxQ
# _psi2_dS NxQ
variance2 = np.square(variance)
common_sum = np.einsum('q,mq,nq->nm',variance,Z,mu) # NxM
dL_dvar = np.einsum('mo,nq,q,mq,oq->q',dL_dpsi2,2.*S,variance,Z,Z)+\
np.einsum('mo,mq,nq,no->q',dL_dpsi2,Z,mu,common_sum)+\
np.einsum('mo,oq,nq,nm->q',dL_dpsi2,Z,mu,common_sum)
dL_dmu = np.einsum('mo,q,mq,no->nq',dL_dpsi2,variance,Z,common_sum)+\
np.einsum('mo,q,oq,nm->nq',dL_dpsi2,variance,Z,common_sum)
dL_dS = np.empty(S.shape)
dL_dS[:] = np.einsum('mo,q,mq,oq->q',dL_dpsi2,variance2,Z,Z)
dL_dZ = 2.*(np.einsum('om,q,mq,nq->oq',dL_dpsi2,variance2,Z,S)+np.einsum('om,q,nq,nm->oq',dL_dpsi2,variance,mu,common_sum))
return dL_dvar, dL_dmu, dL_dS, dL_dZ