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Changes in plot function: sampling vs numerical approximation
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1 changed files with 3 additions and 2 deletions
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@ -173,7 +173,8 @@ class GPBase(Model):
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upper = m + 2*np.sqrt(v)
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Y = self.likelihood.Y
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else:
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m, v, lower, upper = self.predict(Xgrid, which_parts=which_parts)
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m, v, lower, upper = self.predict(Xgrid, which_parts=which_parts,sampling=False) #Compute the exact mean
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m_, v_, lower, upper = self.predict(Xgrid, which_parts=which_parts,sampling=True,num_samples=15000) #Apporximate the percentiles
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Y = self.likelihood.data
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for d in which_data_ycols:
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gpplot(Xnew, m[:, d], lower[:, d], upper[:, d], axes=ax, edgecol=linecol, fillcol=fillcol)
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@ -210,7 +211,7 @@ class GPBase(Model):
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m, _ = self._raw_predict(Xgrid, which_parts=which_parts)
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Y = self.likelihood.Y
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else:
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m, _, _, _ = self.predict(Xgrid, which_parts=which_parts,num_samples=100) #FIXME we need a balance between accuracy and speed to define num_samples
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m, _, _, _ = self.predict(Xgrid, which_parts=which_parts,sampling=False)
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Y = self.likelihood.data
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for d in which_data_ycols:
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m_d = m[:,d].reshape(resolution, resolution).T
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