Poster
in
Workshop: Machine Learning and the Physical Sciences
Deformations of Boltzmann Distributions
Bálint Máté · François Fleuret
Abstract:
Consider a one-parameter family of Boltzmann distributions pt(x)=1Zte−St(x). This work studies the problem of sampling from pt0 by first sampling from pt1 and then applying a transformation Ψt0t1 so that the transformed samples follow pt0. We derive an equation relating Ψ and the corresponding family of unnormalized log-likelihoods St. The utility of this idea is demonstrated on the ϕ4 lattice field theory by extending its defining action S0 to a family of actions St and finding a τ such that normalizing flows perform better at learning the Boltzmann distribution pτ than at learning p0.
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