Capacity-Achieving Input Distributions of Additive Vector Gaussian Noise Channels: Even-Moment Constraints and Unbounded or Compact Support

Entropy (Basel, Switzerland)(2023)

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摘要
We investigate the support of a capacity-achieving input to a vector-valued Gaussian noise channel. The input is subjected to a radial even-moment constraint and is either allowed to take any value in R-n or is restricted to a given compact subset of R-n. It is shown that the support of the capacity-achieving distribution is composed of a countable union of submanifolds, each with a dimension of n-1 or less. When the input is restricted to a compact subset of R-n, this union is finite. Finally, the support of the capacity-achieving distribution is shown to have Lebesgue measure 0 and to be nowhere dense in R-n.
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关键词
amplitude constraint,even-moment constraint,capacity-achieving distribution,Gaussian noise,spherically asymmetric channel
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