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In the tutorial Stacked DenoisingAutoencoders on http://deeplearning.net/tutorial/SdA.html#sda, the pretraining_functions return a list of functions which represent the train function of each dA layer. But I don't understand why it gives all the dA layers the same input (train_set_x). Actually, the input of each dA layer should be the output of the layer below except the first dA layer. Can anybody tell me why these codes are correct?

pretrain_fns = []
for dA in self.dA_layers:
    # get the cost and the updates list
    cost, updates = dA.get_cost_updates(corruption_level, learning_rate)
    # compile the theano function
    fn = theano.function(inputs=[index,
                      theano.Param(corruption_level, default=0.2),
                      theano.Param(learning_rate, default=0.1)],
            givens={self.x: train_set_x[batch_begin:batch_end]})
    # append `fn` to the list of functions
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Since the inputs of each hidden layer are configured as the outputs of the previous layer:

# the input to this layer is either the activation of the hidden
# layer below or the input of the SdA if you are on the first
# layer
if i == 0:
    layer_input = self.x
    layer_input = self.sigmoid_layers[-1].output

When setting self.x to train_set_x[batch_begin:batch_end] in givens section of the pretraining function it actually makes theano propagate the inputs from one layer to the other, so when you pre-train the second layer the inputs will first propagate through the first layer and then be processed by the second.

If you look closely at the end of the tutorial there is a tip how to reduce the training run-time by precomputing the explicit inputs per layer.

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Thank you, but I don't quite understand why theano can propagate the inputs into next layer. Because we only provide a certain parameter to the function. The definition of each layer is right, but train_set_x just didn't change during the cycle. – Shizhe Chen Jul 22 '14 at 0:50
@love_carrot try print the graph and see how it flows, you'll see the inputs of one layer processed for the second one. – Shai Jul 22 '14 at 5:26

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