Exact distribution of the output of a deep-layered machine
Abstract
Deep-layered machines, in which each node computes a Boolean function of all nodes below it, underpin deep learning and digital computation. Yet the statistics of their global output function remain poorly understood. We derive the exact finite-depth distribution of the output of a machine with width k and depth n. The distribution depends only on the Hamming weight of the output, and as n increases favors functions with low and high Hamming weights. But this bias peaks at a crossover depth proportional to 2k before collapsing onto the constant functions true and false.
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