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Concerning the structure of a LSTM network

If I wanted to create LSTM network for solving time series predictions, how should I structure the hiddens layers of the neural network?

  • A LSTM memory block would represent a hidden layer and all the nodes in the layer would be represented by cells?
  • Each hidden layer should consist of numerous LSTM memory blocks, and a collection of such blocks will form a layer?

Graphical representation:

Either in this manner:

proposed solution 1

Or like this ?

proposed solution 2

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2 Answers 2

up vote 3 down vote accepted

After talking to some of the professors at my university, I finally got this sorted out.

You should view a LSTM block as a single neuron in your network.

Thus this network would be regarded as a neural network with a single hidden layer with two neurons: enter image description here

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As far as I know you'd need multiple LSTMs to form a layer (see this paper for example) but you should probably ask this on

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I've read that thesis, and quite a few others - though I've never entirely grasped the precise architecture needed. Since each block could feed out multiple outputs (through different cells) a block should be able to act as a layer. I am just not sure that the weights (and of course the bias) will be able to adjust the output value to a given target in a time! On the other hand, it would do the job as a normal feed forward network - I'm led to believe. –  jorgenkg Jul 5 '13 at 14:50

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