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I have a neural network with one-hot m*n vectors as input, with rows representing categories, and columns representing position.

I want to train a network to output another (stochastic) vector with the same m*n shape at the output layer, with probabilities at each column summing to one. The idea would be to use a softmax final layer, but do I need to build each column separately and concatenate like here? or is it possible to do this more simply in (e.g. one-liner) in Keras?

  • concatenate n different m batches of softmax neurons in the final layer, one for each column – carefullynamed Sep 20 '18 at 19:48
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If your model has an output shape of (None, m, n) and you want to compute the softmax over the second axis, you can simply use the softmax activation method and pass the axis argument to it (in your case it must be axis=1):

from keras import activations

def the_softmax(axis):
    def my_softmax(x):
        return activations.softmax(x, axis=axis)
    return my_softmax

# sequential model
model.add(Dense(..., activation=the_softmax(1)))

# functional model
output = Dense(..., activation=the_softmax(1))(prev_layer_output)

Alternatively, if you would like to use it as an independent layer, you can use a Lambda layer and the backend softmax function:

from keras import backend as K

def the_softmax(axis):
    def my_softmax(x):
        return K.softmax(x, axis=axis)
    return my_softmax

# sequential model
model.add(Lambda(the_softmax(1)))

# functional model
output = Lambda(the_softmax(1))(prev_layer_output)
  • That's helpful thanks, can it be done in the sequential model, or only the functional api? – carefullynamed Sep 20 '18 at 20:22
  • But I can't use it directly as output, I get this error: Output tensors to a Model must be Keras tensors. Found: Tensor("truediv_4:0", shape=(?, 5, 2), dtype=float32) – carefullynamed Sep 20 '18 at 20:28
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    @carefullynamed sorry, I did not test my code. Apparently, you need to use the activation argument of layer. Now it can be used both in sequential and functional models. – today Sep 20 '18 at 20:35
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    @carefullynamed I just used Dense as an example. Whatever layer you use as the last layer, use this softmax activation on it. – today Sep 20 '18 at 20:47
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    @carefullynamed I just added another solution if you would like to use it as an independent layer and changed the function to accept arbitrary axis. – today Sep 20 '18 at 21:04

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