An Information-Spectrum Approach to Distributed Hypothesis Testing for General Sources
Abstract
This paper investigates Distributed Hypothesis testing (DHT), in which a source is encoded given that side information is available at the decoder only. Based on the received coded data, the receiver aims to decide on the two hypotheses or related to the joint distribution of and . While most existing contributions in the literature on DHT consider i.i.d. assumptions, this paper assumes more generic, non-i.i.d., non-stationary, and non-ergodic sources models. It relies on information-spectrum tools to provide general formulas on the achievable Type-II error exponent under a constraint on the Type-I error. The achievability proof is based on a quantize-and-binning scheme. It is shown that with the quantize-and-binning approach, the error exponent boils down to a trade-off between a binning error and a decision error, as already observed for the i.i.d. sources. The last part of the paper provides error exponents for particular source models, \emph{e.g.}, Gaussian, stationary, and ergodic models.
Cite
@article{arxiv.2305.06887,
title = {An Information-Spectrum Approach to Distributed Hypothesis Testing for General Sources},
author = {Ismaila Salihou Adamou and Elsa Dupraz and Tad Matsumoto},
journal= {arXiv preprint arXiv:2305.06887},
year = {2023}
}
Comments
Submitted to Globecom 2023