Stability of Bernstein's Theorem and Soft Doubling for Vector Gaussian Channels

12/08/2022
by   Mohammad Mahdi Mahvari, et al.
0

The stability of Bernstein's characterization of Gaussian distributions is extended to vectors. Stability is used to develop a soft doubling argument that establishes the optimality of Gaussian vectors for certain communications channels with additive Gaussian noise, including two-receiver broadcast channels. One novelty is that the argument does not require the existence of distributions that achieve capacity.

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