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?