Computer Science > Information Theory
[Submitted on 25 Aug 2015 (v1), last revised 28 Jul 2016 (this version, v4)]
Title:Strong data-processing inequalities for channels and Bayesian networks
View PDFAbstract:The data-processing inequality, that is, $I(U;Y) \le I(U;X)$ for a Markov chain $U \to X \to Y$, has been the method of choice for proving impossibility (converse) results in information theory and many other disciplines. Various channel-dependent improvements (called strong data-processing inequalities, or SDPIs) of this inequality have been proposed both classically and more recently. In this note we first survey known results relating various notions of contraction for a single channel. Then we consider the basic extension: given SDPI for each constituent channel in a Bayesian network, how to produce an end-to-end SDPI?
Our approach is based on the (extract of the) Evans-Schulman method, which is demonstrated for three different kinds of SDPIs, namely, the usual Ahslwede-Gács type contraction coefficients (mutual information), Dobrushin's contraction coefficients (total variation), and finally the $F_I$-curve (the best possible non-linear SDPI for a given channel). Resulting bounds on the contraction coefficients are interpreted as probability of site percolation. As an example, we demonstrate how to obtain SDPI for an $n$-letter memoryless channel with feedback given an SDPI for $n=1$.
Finally, we discuss a simple observation on the equivalence of a linear SDPI and comparison to an erasure channel (in the sense of "less noisy" order). This leads to a simple proof of a curious inequality of Samorodnitsky (2015), and sheds light on how information spreads in the subsets of inputs of a memoryless channel.
Submission history
From: Yury Polyanskiy [view email][v1] Tue, 25 Aug 2015 04:29:28 UTC (24 KB)
[v2] Tue, 2 Feb 2016 03:48:35 UTC (37 KB)
[v3] Fri, 20 May 2016 01:23:34 UTC (40 KB)
[v4] Thu, 28 Jul 2016 20:57:45 UTC (43 KB)
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