Added symmtrical covariance functions

This commit is contained in:
James Hensman 2013-03-05 15:58:03 +00:00
parent 054faae4af
commit f2ce47d96e
3 changed files with 103 additions and 1 deletions

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@ -2,5 +2,5 @@
# Licensed under the BSD 3-clause license (see LICENSE.txt)
from constructors import rbf, Matern32, Matern52, exponential, linear, white, bias, finite_dimensional, spline, Brownian, rbf_sympy, sympykern, periodic_exponential, periodic_Matern32, periodic_Matern52, product, product_orthogonal
from constructors import rbf, Matern32, Matern52, exponential, linear, white, bias, finite_dimensional, spline, Brownian, rbf_sympy, sympykern, periodic_exponential, periodic_Matern32, periodic_Matern52, product, product_orthogonal, symmetric
from kern import kern

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@ -20,6 +20,7 @@ from periodic_Matern32 import periodic_Matern32 as periodic_Matern32part
from periodic_Matern52 import periodic_Matern52 as periodic_Matern52part
from product import product as productpart
from product_orthogonal import product_orthogonal as product_orthogonalpart
from symmetric import symmetric as symmetric_part
#TODO these s=constructors are not as clean as we'd like. Tidy the code up
#using meta-classes to make the objects construct properly wthout them.
@ -264,3 +265,12 @@ def product_orthogonal(k1,k2):
"""
part = product_orthogonalpart(k1,k2)
return kern(k1.D+k2.D, [part])
def symmetric(k):
"""
Construct a symmetrical kernel from an existing kernel
"""
k_ = k.copy()
k_.parts = [symmetric_part(p) for p in k.parts]
return k_

92
GPy/kern/symmetric.py Normal file
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@ -0,0 +1,92 @@
# Copyright (c) 2012 James Hensman
# Licensed under the BSD 3-clause license (see LICENSE.txt)
from kernpart import kernpart
import numpy as np
class symmetric(kernpart):
"""
Symmetrical kernels
:param k: the kernel to symmetrify
:type k: kernpart
:param transform: the transform to use in symmetrification (allows symmetry on specified axes)
:type transform: A numpy array (D x D) specifiying the transform
:rtype: kernpart
"""
def __init__(self,k,transform=None):
if transform is None:
transform = np.eye(k.D)*-1.
assert transform.shape == (k.D, k.D)
self.transform = transform
self.D = k.D
self.Nparam = k.Nparam
self.name = k.name + '_symm'
self.k = k
self._set_params(k._get_params())
def _get_params(self):
"""return the value of the parameters."""
return self.k._get_params()
def _set_params(self,x):
"""set the value of the parameters."""
self.k._set_params(x)
def _get_param_names(self):
"""return parameter names."""
return self.k._get_param_names()
def K(self,X,X2,target):
"""Compute the covariance matrix between X and X2."""
AX = np.dot(X,self.transform)
if X2 is None:
X2 = X
AX2 = AX
else:
AX2 = np.dot(X2, self.transform)
self.k.K(X,X2,target)
self.k.K(AX,X2,target)
self.k.K(X,AX2,target)
self.k.K(AX,AX2,target)
def dK_dtheta(self,partial,X,X2,target):
"""derivative of the covariance matrix with respect to the parameters."""
AX = np.dot(X,self.transform)
if X2 is None:
X2 = X
ZX2 = AX
else:
AX2 = np.dot(X2, self.transform)
self.k.dK_dtheta(partial,X,X2,target)
self.k.dK_dtheta(partial,AX,X2,target)
self.k.dK_dtheta(partial,X,AX2,target)
self.k.dK_dtheta(partial,AX,AX2,target)
def dK_dX(self,partial,X,X2,target):
"""derivative of the covariance matrix with respect to X."""
AX = np.dot(X,self.transform)
if X2 is None:
X2 = X
ZX2 = AX
else:
AX2 = np.dot(X2, self.transform)
self.k.dK_dX(partial, X, X2, target)
self.k.dK_dX(partial, AX, X2, target)
self.k.dK_dX(partial, X, AX2, target)
self.k.dK_dX(partial, AX ,AX2, target)
def Kdiag(self,X,target):
"""Compute the diagonal of the covariance matrix associated to X."""
foo = np.zeros((X.shape[0],X.shape[0]))
self.K(X,X,foo)
target += np.diag(foo)
def dKdiag_dX(self,partial,X,target):
raise NotImplementedError
def dKdiag_dtheta(self,partial,X,target):
"""Compute the diagonal of the covariance matrix associated to X."""
raise NotImplementedError