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JH bugfix for slices
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1 changed files with 2 additions and 2 deletions
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@ -72,7 +72,7 @@ class GP(model):
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self.likelihood._set_params(p[self.kern.Nparam_transformed():]) # test by Nicolas
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self.likelihood._set_params(p[self.kern.Nparam_transformed():]) # test by Nicolas
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self.K = self.kern.K(self.X,slices1=self.Xslices)
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self.K = self.kern.K(self.X,slices1=self.Xslices,slices2=self.Xslices)
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self.K += self.likelihood.covariance_matrix
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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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self.Ki, self.L, self.Li, self.K_logdet = pdinv(self.K)
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@ -129,7 +129,7 @@ class GP(model):
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For the likelihood parameters, pass in alpha = K^-1 y
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For the likelihood parameters, pass in alpha = K^-1 y
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"""
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"""
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return np.hstack((self.kern.dK_dtheta(partial=self.dL_dK,X=self.X), self.likelihood._gradients(partial=np.diag(self.dL_dK))))
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return np.hstack((self.kern.dK_dtheta(partial=self.dL_dK,X=self.X,slices1=self.Xslices,slices2=self.Xslices), self.likelihood._gradients(partial=np.diag(self.dL_dK))))
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def _raw_predict(self,_Xnew,slices=None, full_cov=False):
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def _raw_predict(self,_Xnew,slices=None, full_cov=False):
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"""
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"""
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