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arxiv: 1708.05859 · v2 · pith:54RXJXSMnew · submitted 2017-08-19 · 🧮 math.PR · math-ph· math.MP· math.ST· stat.TH

Decomposition of mean-field Gibbs distributions into product measures

classification 🧮 math.PR math-phmath.MPmath.STstat.TH
keywords distributionsmean-fieldcaseconditiongibbsmeasuresproductapplication
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We show that under a low complexity condition on the gradient of a Hamiltonian, Gibbs distributions on the Boolean hypercube are approximate mixtures of product measures whose probability vectors are critical points of an associated mean-field functional. This extends a previous work by the first author. As an application, we demonstrate how this framework helps characterize both Ising models satisfying a mean-field condition and the conditional distributions which arise in the emerging theory of nonlinear large deviations, both in the dense case and in the polynomially-sparse case.

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