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142 lines
4.6 KiB
Python
142 lines
4.6 KiB
Python
# Copyright (c) 2012, James Hensman and Ricardo Andrade
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# Licensed under the BSD 3-clause license (see LICENSE.txt)
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from kernpart import Kernpart
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import numpy as np
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from GPy.util.linalg import mdot, pdinv
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import pdb
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from scipy import weave
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class Coregionalise(Kernpart):
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"""
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Kernel for Intrinsic Corregionalization Models
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"""
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def __init__(self,Nout,R=1, W=None, kappa=None):
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self.input_dim = 1
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self.name = 'coregion'
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self.Nout = Nout
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self.R = R
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if W is None:
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self.W = np.ones((self.Nout,self.R))
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else:
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assert W.shape==(self.Nout,self.R)
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self.W = W
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if kappa is None:
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kappa = np.ones(self.Nout)
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else:
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assert kappa.shape==(self.Nout,)
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self.kappa = kappa
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self.num_params = self.Nout*(self.R + 1)
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self._set_params(np.hstack([self.W.flatten(),self.kappa]))
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def _get_params(self):
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return np.hstack([self.W.flatten(),self.kappa])
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def _set_params(self,x):
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assert x.size == self.num_params
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self.kappa = x[-self.Nout:]
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self.W = x[:-self.Nout].reshape(self.Nout,self.R)
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self.B = np.dot(self.W,self.W.T) + np.diag(self.kappa)
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def _get_param_names(self):
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return sum([['W%i_%i'%(i,j) for j in range(self.R)] for i in range(self.Nout)],[]) + ['kappa_%i'%i for i in range(self.Nout)]
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def K(self,index,index2,target):
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index = np.asarray(index,dtype=np.int)
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#here's the old code (numpy)
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#if index2 is None:
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#index2 = index
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#else:
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#index2 = np.asarray(index2,dtype=np.int)
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#false_target = target.copy()
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#ii,jj = np.meshgrid(index,index2)
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#ii,jj = ii.T, jj.T
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#false_target += self.B[ii,jj]
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if index2 is None:
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code="""
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for(int i=0;i<N; i++){
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target[i+i*N] += B[index[i]+Nout*index[i]];
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for(int j=0; j<i; j++){
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target[j+i*N] += B[index[i]+Nout*index[j]];
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target[i+j*N] += target[j+i*N];
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}
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}
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"""
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N,B,Nout = index.size, self.B, self.Nout
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weave.inline(code,['target','index','N','B','Nout'])
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else:
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index2 = np.asarray(index2,dtype=np.int)
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code="""
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for(int i=0;i<num_inducing; i++){
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for(int j=0; j<N; j++){
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target[i+j*num_inducing] += B[Nout*index[j]+index2[i]];
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}
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}
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"""
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N,num_inducing,B,Nout = index.size,index2.size, self.B, self.Nout
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weave.inline(code,['target','index','index2','N','num_inducing','B','Nout'])
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def Kdiag(self,index,target):
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target += np.diag(self.B)[np.asarray(index,dtype=np.int).flatten()]
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def dK_dtheta(self,dL_dK,index,index2,target):
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index = np.asarray(index,dtype=np.int)
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dL_dK_small = np.zeros_like(self.B)
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if index2 is None:
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index2 = index
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else:
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index2 = np.asarray(index2,dtype=np.int)
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code="""
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for(int i=0; i<num_inducing; i++){
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for(int j=0; j<N; j++){
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dL_dK_small[index[j] + Nout*index2[i]] += dL_dK[i+j*num_inducing];
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}
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}
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"""
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N, num_inducing, Nout = index.size, index2.size, self.Nout
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weave.inline(code, ['N','num_inducing','Nout','dL_dK','dL_dK_small','index','index2'])
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dkappa = np.diag(dL_dK_small)
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dL_dK_small += dL_dK_small.T
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dW = (self.W[:,None,:]*dL_dK_small[:,:,None]).sum(0)
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target += np.hstack([dW.flatten(),dkappa])
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def dK_dtheta_old(self,dL_dK,index,index2,target):
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if index2 is None:
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index2 = index
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else:
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index2 = np.asarray(index2,dtype=np.int)
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ii,jj = np.meshgrid(index,index2)
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ii,jj = ii.T, jj.T
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dL_dK_small = np.zeros_like(self.B)
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for i in range(self.Nout):
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for j in range(self.Nout):
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tmp = np.sum(dL_dK[(ii==i)*(jj==j)])
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dL_dK_small[i,j] = tmp
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dkappa = np.diag(dL_dK_small)
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dL_dK_small += dL_dK_small.T
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dW = (self.W[:,None,:]*dL_dK_small[:,:,None]).sum(0)
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target += np.hstack([dW.flatten(),dkappa])
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def dKdiag_dtheta(self,dL_dKdiag,index,target):
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index = np.asarray(index,dtype=np.int).flatten()
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dL_dKdiag_small = np.zeros(self.Nout)
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for i in range(self.Nout):
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dL_dKdiag_small[i] += np.sum(dL_dKdiag[index==i])
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dW = 2.*self.W*dL_dKdiag_small[:,None]
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dkappa = dL_dKdiag_small
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target += np.hstack([dW.flatten(),dkappa])
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def dK_dX(self,dL_dK,X,X2,target):
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pass
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