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Distributed Hypothesis Testing with Variable-Length Coding

Information Theory 2020-05-19 v1 math.IT

Abstract

The problem of distributed testing against independence with variable-length coding is considered when the \emph{average} and not the \emph{maximum} communication load is constrained as in previous works. The paper characterizes the optimum type-II error exponent of a single sensor single decision center system given a maximum type-I error probability when communication is either over a noise-free rate-RR link or over a noisy discrete memoryless channel (DMC) with stop-feedback. Specifically, let ϵ\epsilon denote the maximum allowed type-I error probability. Then the optimum exponent of the system with a rate-RR link under a constraint on the average communication load coincides with the optimum exponent of such a system with a rate R/(1ϵ)R/(1-\epsilon) link under a maximum communication load constraint. A strong converse thus does not hold under an average communication load constraint. A similar observation holds also for testing against independence over DMCs. With variable-length coding and stop-feedback and under an average communication load constraint, the optimum type-II error exponent over a DMC of capacity CC equals the optimum exponent under fixed-length coding and a maximum communication load constraint when communication is over a DMC of capacity C(1ϵ)1C(1-\epsilon)^{-1}. In particular, under variable-length coding over a DMC with stop feedback a strong converse result does not hold and the optimum error exponent depends on the transition law of the DMC only through its capacity.

Keywords

Cite

@article{arxiv.2005.08610,
  title  = {Distributed Hypothesis Testing with Variable-Length Coding},
  author = {Sadaf Salehkalaibar and Michele Wigger},
  journal= {arXiv preprint arXiv:2005.08610},
  year   = {2020}
}