Esempio n. 1
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 def sample_from_activation(self, vmap):
     mu = self.mean_from_activation(vmap)
     sigma2 = self.variance_from_activation(vmap)
     return samplers.gaussian(mu, sigma2)
Esempio n. 2
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 def sample_from_activation(self, vmap):
     mu = self.mean_from_activation(vmap)
     return samplers.gaussian(mu)
Esempio n. 3
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 def sample_from_activation(self, vmap):
     s = vmap[self] + samplers.gaussian(0, T.nnet.sigmoid(vmap[self])) # approximation: linear + gaussian noise
     return T.max(0, s) # rectify
Esempio n. 4
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 def sample_from_activation(self, vmap):
     mu = self.mean_from_activation(vmap)
     return samplers.gaussian(mu)
Esempio n. 5
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 def sample_from_activation(self, vmap):
     s = vmap[self] + samplers.gaussian(0, T.nnet.sigmoid(
         vmap[self]))  # approximation: linear + gaussian noise
     return T.max(0, s)  # rectify
Esempio n. 6
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 def sample_from_activation(self, vmap):
     mu = self.mean_from_activation(vmap)
     sigma2 = self.variance_from_activation(vmap)
     return samplers.gaussian(mu, sigma2)