Super-Linear Growth of the Capacity-Achieving Input Support for the Amplitude-Constrained AWGN Channel

Abstract

We study the growth of the support size of the capacity-achieving input distribution for the amplitude-constrained additive white Gaussian noise (AWGN) channel. While it is known since Smith (1971) that the optimal input is discrete with finitely many mass points, tight bounds on the number of support points KA as the amplitude constraint A increases remain open. Not much is known until recently, when Dytso et al. (2019) proved that KA grows at least linearly and at most quadratically in A. Here, we provide a novel method, building on Ma et al. (2024); Zhang (1994), to derive the first non-trivial lower bound showing that KA grows super-linearly in A.

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