I have a dialog corpus like below. And I want to implement a LSTM model which predicts a system action. The system action is described as a bit vector. And a user input is calculated as a word-embedding which is also a bit vector.
t1: user: "Do you know an apple?", system: "no"(action=2) t2: user: "xxxxxx", system: "yyyy" (action=0) t3: user: "aaaaaa", system: "bbbb" (action=5)
So what I want to realize is "many to many (2)" model. When my model receives a user input, it must output a system action.
But I cannot understand
return_sequences option and
TimeDistributed layer after LSTM. To realize "many-to-many (2)",
return_sequences==True and adding a
TimeDistributed after LSTMs are required? I appreciate if you would give more description of them.
return_sequences: Boolean. Whether to return the last output in the output sequence, or the full sequence.
TimeDistributed: This wrapper allows to apply a layer to every temporal slice of an input.
Updated 2017/03/13 17:40
I think I could understand the
return_sequence option. But I am not still sure about
TimeDistributed. If I add a
TimeDistributed after LSTMs, is the model the same as "my many-to-many(2)" below? So I think Dense layers are applied for each output.