-1

I just read through and ran the code here: https://tomaxent.com/2017/04/26/LSTM-by-Example-using-Tensorflow-Text-Generate/

(this guy rips off the following medium.com article, but I can't access medium.com from my work computer); https://medium.com/towards-data-science/lstm-by-example-using-tensorflow-feb0c1968537

From my previous reading, it is my understanding that to train RNNs, we have to 'unwrap' them into feed forward networks (FFN) for a certain number of steps (along with an extra input for the "x at time t"), and set it so that all the weights in the FFN that correspond to a single weight in the RNN are equal.

I'm looking at the code and I don't see any 'unwrapping' step, or even a variable indicating the number of steps for which we want to unwrap.

Is there another way to train an RNN? Am I just missing the line in the code where that variable is defined?

  • RNNs are trained using backprop through time. It is true that at each timestep the weights are the same (until they are update after a batch). – Alex Nov 8 '18 at 15:11
0

If i am not mistaken there is no such 'unwrapping step'.We generally "unroll" a RNN in-order to understand its working properly (through each time step). Now,coming to Tensorflow Implementation I found this repo:MuhammedBuyukkinaci/TensorFlow-Text-Generator to be very useful and this might clear up your most of the doubts.

Other Useful Links:

Tensorflow-RNN

Basic_Rnn_Cell

Static_RNN Cell

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.