I am fairly new to RNNs and LSTMs but have spent quite some time studying from various resources I could find on the internet. What I gathered was that a time step in a recurrent neural network was the same as a forward pass in a feed forward neural network. But this turned out to be wrong. Then what is it ?


A forward pass involves running one data item (e.g. a full sentence) entirely through the network, until the item is fully processed (i.e. we have classification output).

A time step is the portion of a pass in which node inputs are processed into outputs, and then those outputs are fed to the next node -- often feeding back to a prior input.

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    So what you are trying to say is basically the activation of the next layer by the previous layer is a time step. Then what is the "length" of a time step ? How can we control it ? – Tanmay Bhatnagar Nov 11 '17 at 19:52
  • Right -- that's a good way to describe it. The "length" is controlled by the topology: what unit of information-time is handled by a perceptron in one input-to-output pass? I'm used to audio streams parsing the input into clips of differing sizes, each clip being a few milliseconds long and corresponding to one sub-phoneme phonic element. Text streams often progress one word at a time (with stop words ignored). – Prune Nov 13 '17 at 18:23
  • You described how we control the length. But what is the length of a timestep ? – Tanmay Bhatnagar Nov 14 '17 at 16:53
  • That control defines the length. The model itself has no inherent sense of external time -- timestep is the unit of time in this sense. – Prune Nov 14 '17 at 17:11

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