Local Max-Entropy and Free Energy Principles Solved by Belief Propagation
Abstract
A statistical system is classically defined on a set of microstates E by a global energy function H : E R, yielding Gibbs probability measures (softmins) β(H) for every inverse temperature β = T-1. Gibbs states are simultaneously characterized by free energy principles and the max-entropy principle, with dual constraints on inverse temperature β and mean energy U(β) = Eβ[H] respectively. The Legendre transform relates these diverse variational principles which are unfortunately not tractable in high dimension. The global energy is generally given as a sum H(x) = Σ a ⊂ h a(x| a) of local short-range interactions h a : E a R indexed by bounded subregions a ⊂ , and this local structure can be used to design good approximation schemes on thermodynamic functionals. We show that the generalized belief propagation (GBP) algorithm solves a collection of local variational principles, by converging to critical points of Bethe-Kikuchi approximations of the free energy F(β), the Shannon entropy S( U), and the variational free energy F(β) = U - β-1 S( U), extending an initial correspondence by Yedidia et al. This local form of Legendre duality yields a possible degenerate relationship between mean energy U and β.
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