A Note on the Representation Power of GHHs

01/27/2021
by   Zhou Lu, et al.
0

In this note we prove a sharp lower bound on the necessary number of nestings of nested absolute-value functions of generalized hinging hyperplanes (GHH) to represent arbitrary CPWL functions. Previous upper bound states that n+1 nestings is sufficient for GHH to achieve universal representation power, but the corresponding lower bound was unknown. We prove that n nestings is necessary for universal representation power, which provides an almost tight lower bound. We also show that one-hidden-layer neural networks don't have universal approximation power over the whole domain. The analysis is based on a key lemma showing that any finite sum of periodic functions is either non-integrable or the zero function, which might be of independent interest.

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