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Universal Approximation of Markov Kernels by Shallow Stochastic Feedforward Networks

Published 24 Mar 2015 in cs.LG and stat.ML | (1503.07211v1)

Abstract: We establish upper bounds for the minimal number of hidden units for which a binary stochastic feedforward network with sigmoid activation probabilities and a single hidden layer is a universal approximator of Markov kernels. We show that each possible probabilistic assignment of the states of $n$ output units, given the states of $k\geq1$ input units, can be approximated arbitrarily well by a network with $2{k-1}(2{n-1}-1)$ hidden units.

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