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Multi-variate correlation and mixtures of product measures

27 September 2018
Tim Austin
ArXiv (abs)PDFHTML
Abstract

Total correlation (`TC') and dual total correlation (`DTC') are two classical ways to quantify the correlation among an nnn-tuple of random variables. They both reduce to mutual information when n=2n=2n=2. The first part of this paper sets up the theory of TC and DTC for general random variables, not necessarily finite-valued. This generality has not been exposed in the literature before. The second part considers the structural implications when a joint distribution μ\muμ has small TC or DTC. If TC(μ)=o(n)\mathrm{TC}(\mu) = o(n)TC(μ)=o(n), then μ\muμ is close to a product measure according to a suitable transportation metric: this follows directly from Marton's classical transportation-entropy inequality. If DTC(μ)=o(n)\mathrm{DTC}(\mu) = o(n)DTC(μ)=o(n), then the structural consequence is more complicated: μ\muμ is a mixture of a controlled number of terms, most of them close to product measures in the transportation metric. This is the main new result of the paper.

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