English

Channel Coding for Gaussian Channels with Mean and Variance Constraints

Information Theory 2025-09-15 v3 math.IT

Abstract

We consider channel coding for Gaussian channels with the recently introduced mean and variance cost constraints. Through matching converse and achievability bounds, we characterize the optimal first- and second-order performance. The main technical contribution of this paper is an achievability scheme which uses random codewords drawn from a mixture of three uniform distributions on (n1)(n-1)-spheres of radii R1,R2R_1, R_2 and R3R_3, where Ri=O(n)R_i = O(\sqrt{n}) and RiRj=O(1)|R_i - R_j| = O(1). To analyze such a mixture distribution, we prove a lemma giving a uniform O(logn)O(\log n) bound, which holds with high probability, on the log ratio of the output distributions QiccQ_i^{cc} and QjccQ_j^{cc}, where QiccQ_i^{cc} is induced by a random channel input uniformly distributed on an (n1)(n-1)-sphere of radius RiR_i. To facilitate the application of the usual central limit theorem, we also give a uniform O(logn)O(\log n) bound, which holds with high probability, on the log ratio of the output distributions QiccQ_i^{cc} and QiQ^*_i, where QiQ_i^* is induced by a random channel input with i.i.d. components.

Keywords

Cite

@article{arxiv.2501.10953,
  title  = {Channel Coding for Gaussian Channels with Mean and Variance Constraints},
  author = {Adeel Mahmood and Aaron B. Wagner},
  journal= {arXiv preprint arXiv:2501.10953},
  year   = {2025}
}