提交 477b55bb authored 作者: Ian Goodfellow's avatar Ian Goodfellow

fixed more stuff autopep8 broke

上级 201b8102
...@@ -263,8 +263,8 @@ class SigmoidXEQuadraticDenoisingAA(QuadraticDenoisingAA): ...@@ -263,8 +263,8 @@ class SigmoidXEQuadraticDenoisingAA(QuadraticDenoisingAA):
def _instance_initialize(self, obj, input_size, hidden_size, noise_level, seed, lr, qfilter_relscale): def _instance_initialize(self, obj, input_size, hidden_size, noise_level, seed, lr, qfilter_relscale):
# obj.l2_coef = 0.0 # obj.l2_coef = 0.0
obj.noise_level = N.asarray(noise_level, dtype=config.floatX) obj.noise_level = N.asarray(noise_level, dtype=config.floatX)
super(SigmoidXEQuadraticDenoisingAA, self) super(SigmoidXEQuadraticDenoisingAA, self)._instance_initialize(
._instance_initialize(obj, input_size, hidden_size, seed, lr, qfilter_relscale) obj, input_size, hidden_size, seed, lr, qfilter_relscale)
QDAA = SigmoidXEQuadraticDenoisingAA QDAA = SigmoidXEQuadraticDenoisingAA
...@@ -399,8 +399,8 @@ class ConvolutionalMLP(module.FancyModule): ...@@ -399,8 +399,8 @@ class ConvolutionalMLP(module.FancyModule):
_qfilters = self.input_representations[0].qfilters _qfilters = self.input_representations[0].qfilters
) )
) )
assert self.input_representations[-1] assert self.input_representations[-1].w1 is \
.w1 is self.input_representations[0].w1 self.input_representations[0].w1
self.input_representation = T.concatenate([i. self.input_representation = T.concatenate([i.
hidden for i in self.input_representations], axis=1) hidden for i in self.input_representations], axis=1)
...@@ -468,10 +468,10 @@ class ConvolutionalMLP(module.FancyModule): ...@@ -468,10 +468,10 @@ class ConvolutionalMLP(module.FancyModule):
# for layer in obj.layers: # for layer in obj.layers:
# if layer.lr is None: # if layer.lr is None:
# layer.lr = lr # layer.lr = lr
assert self.input_representations[-1] assert self.input_representations[-1] \
is not self.input_representations[0] is not self.input_representations[0]
assert self.input_representations[-1] assert self.input_representations[-1].w1 is\
.w1 is self.input_representations[0].w1 self.input_representations[0].w1
for i in self.input_representations: for i in self.input_representations:
# i.initialize(input_size=self.input_size, hidden_size=self.input_representation_size, seed=R.random_integers(2**30), noise_level=noise_level, qfilter_relscale=qfilter_relscale) # i.initialize(input_size=self.input_size, hidden_size=self.input_representation_size, seed=R.random_integers(2**30), noise_level=noise_level, qfilter_relscale=qfilter_relscale)
......
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