Here are some of my doubts:
There are 2 ways specified under the
Achieving one to manysection where it’s written that we can use
stateful=Trueto recurrently take the output of one step and serve it as the input of the next step (needs output_features == input_features).
One to many with repeat vectordiagram, the repeated vector is fed as input in all the time-step, whereas in the
One to many with stateful=Truethe output is fed as input in the next time step. So, aren't we changing the way the layers work by using the
Which of the above 2 approaches (using the repeat vector OR feeding the previous time-step output as the next input) should be followed when building an RNN?
One to many with stateful=Truesection, to change the behaviour of
one to many, in the code for manual loop for prediction, how will we know the
steps_to_predictvariable because we don't know the ouput sequence length in advance.
I also did not understand the way the entire model is using the
last_step outputto generate the
next_step ouput. It has confused me about the working of
model.predict()function. I mean, doesn't
model.predict()simultaneously predict the entire output sequences at once rather than looping through the
no. of output sequences(whose value I still don't know) to be generated and doing
model.predict()to predict a specific time-step output in a given iteration?
I couldn't understand the entire of
Many to manycase. Any other link would be helpful.
I understand that we use
model.reset_states()to make sure that a new batch is independent of the previous batch. But, Do we manually create batches of sequence such that one batch follows another batch or does
stateful=Truemode automatically divides the sequence into such batches.
If it's done manually then, why would anyone divide the dataset into such batches in which a part of a sequence is in one batch and the other in the next batch?
At last, what are the practical implementation or examples/use-cases where
stateful=Truewould be used(because this seems to be something unusual)? I am learning LSTMs and this is the first time I've been introduced to
Can anyone help me in explaining my silly questions so that I can be clear on LSTM implementation in Keras?
EDIT: Asking some of these for clarification of the current answer and some for the remaining doubts
A. So, basically stateful lets us
keep OR reset the inner state after every batch. Then, how would the model learn if we keep on resetting the inner state again and again after each batch trained? Does resetting truely means resetting the parameters(used in computing the hidden state)?
B. In the line
If stateful=False: automatically resets inner state, resets last output step. What did you mean by resetting the last output step? I mean, if every time-step produces its own output then what does resetting of last output step mean and that too only the last one?
C. In response to
Question 2 and 2nd point of
Question 4, I still didn't get your
manipulate the batches between each iteration and the need of
stateful((last line of
Question 2) which only resets the states). I got to the point that we don't know the input for every output generated in a time-step.
So, you break the sequences into sequences of
only one-step and then use
new_step = model.predict(last_step) but then how do you know about how long do you need to do this again and again(there must be a stopping point for the loop)? Also, do explain the
stateful part( in the last line of
D. In the code under
One to many with stateful=True, it seems that the for loop(manual loop) is used for predicting the next word is used just in test time. Does the model incorporates that thing itself at train time or do we
manually need use this loop also at the train time?
E. Suppose we are doing some machine translation job, I think the breaking of sequences will occur after the entire input(language to translate) has been fed to the input time-steps and then generation of outputs(translated language) at each time-step is going to take place via the
manual loop because now we are ended up with the inputs and starting to produce output at each time-step using the iteration. Did I get it right?
F. As the default working of LSTMs requires 3 things mentioned in the answer, so in case of breaking of sequences, are
previous_output fed with same vectors because their value in case of no current input being available is same?
G. Under the many to many with stateful=True under the Predicting: section, the code reads:
predicted = model.predict(totalSequences) firstNewStep = predicted[:,-1:]
Since, the manual loop of
finding the very next word in the current sequence hasn't been used up till now, how do I know the
count of the time-steps that has been predicted by the
model.predict(totalSequences) so that the last step from predicted(
predicted[:,-1:]) will then later be used for generating the rest of the sequences? I mean, how do I know the number of sequences that have been produced in the
predicted = model.predict(totalSequences) before the
manual for loop (later used).
D answer I still didn't get how will I train my model? I understand that using the manual loop(during training) can be quite painful but then if I don't use it how will the model get trained in the circumstances where
we want the 10 future steps, we cannot output them at once because we don't have the necessary 10 input steps? Will simply using
model.fit() solve my problem?
D answer's last para,
You could train step by step using train_on_batch only in the case you have the expected outputs of each step. But otherwise I think it's very complicated or impossible to train..
Can you explain this in more detail?
step by step mean? If I don't have OR have the output for the later sequences , how will that affect my training? Do I still need the manual loop during training. If not, then will the
model.fit() function work as desired?
III. I interpreted the
"repeat" option as using the
repeat vector. Wouldn't using the repeat vector be just good for the
one to many case and not suitable for the
many to many case because the latter will have many input vectors to choose from(to be used as a single repeated vector) ? How will you use the
repeat vector for the
many to many case?