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Added Y_metadata to log_predictive_density
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1 changed files with 37 additions and 4 deletions
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@ -70,7 +70,7 @@ class Likelihood(Parameterized):
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"""
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raise NotImplementedError
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def log_predictive_density(self, y_test, mu_star, var_star):
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def log_predictive_density(self, y_test, mu_star, var_star, Y_metadata=None):
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"""
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Calculation of the log predictive density
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@ -87,13 +87,46 @@ class Likelihood(Parameterized):
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assert y_test.shape==mu_star.shape
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assert y_test.shape==var_star.shape
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assert y_test.shape[1] == 1
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def integral_generator(y, m, v):
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flat_y_test = y_test.flatten()
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flat_mu_star = mu_star.flatten()
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flat_var_star = var_star.flatten()
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if Y_metadata is not None:
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#Need to zip individual elements of Y_metadata aswell
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Y_metadata_flat = {}
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if Y_metadata is not None:
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for key, val in Y_metadata.items():
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Y_metadata_flat[key] = np.atleast_1d(val).reshape(-1,1)
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zipped_values = []
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for i in range(y_test.shape[0]):
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y_m = {}
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for key, val in Y_metadata_flat.items():
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if np.isscalar(val) or val.shape[0] == 1:
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y_m[key] = val
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else:
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#Won't broadcast yet
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y_m[key] = val[i]
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zipped_values.append((flat_y_test[i], flat_mu_star[i], flat_var_star[i], y_m))
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else:
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#Otherwise just pass along None's
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zipped_values = zip(flat_y_test, flat_mu_star, flat_var_star, [None]*y_test.shape[0])
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def integral_generator(y, m, v, y_m):
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"""Generate a function which can be integrated to give p(Y*|Y) = int p(Y*|f*)p(f*|Y) df*"""
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def f(f_star):
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return self.pdf(f_star, y)*np.exp(-(1./(2*v))*np.square(m-f_star))
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#exponent = np.exp(-(1./(2*v))*np.square(m-f_star))
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#from GPy.util.misc import safe_exp
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#exponent = safe_exp(exponent)
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#return self.pdf(f_star, y, y_m)*exponent
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#More stable in the log space
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return np.exp(self.logpdf(f_star, y, y_m) -(1./(2*v))*np.square(m-f_star))
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return f
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scaled_p_ystar, accuracy = zip(*[quad(integral_generator(y, m, v), -np.inf, np.inf) for y, m, v in zip(y_test.flatten(), mu_star.flatten(), var_star.flatten())])
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scaled_p_ystar, accuracy = zip(*[quad(integral_generator(y, m, v, y_m), -np.inf, np.inf) for y, m, v, y_m in zipped_values])
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scaled_p_ystar = np.array(scaled_p_ystar).reshape(-1,1)
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p_ystar = scaled_p_ystar/np.sqrt(2*np.pi*var_star)
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return np.log(p_ystar)
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