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arxiv: 1102.4149 · v3 · pith:EG7Z3UATnew · submitted 2011-02-21 · ❄️ cond-mat.stat-mech · cond-mat.str-el· physics.comp-ph· physics.data-an

Bayesian Inference in the Scaling Analysis of Critical Phenomena

classification ❄️ cond-mat.stat-mech cond-mat.str-elphysics.comp-phphysics.data-an
keywords methodscalingcriticalanalysisdatafunctionlatticesphenomena
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To determine the universality class of critical phenomena, we propose a method of statistical inference in the scaling analysis of critical phenomena. The method is based on Bayesian statistics, most specifically, the Gaussian process regression. It assumes only the smoothness of a scaling function, and it does not need a form. We demonstrate this method for the finite-size scaling analysis of the Ising models on square and triangular lattices. Near the critical point, the method is comparable in accuracy to the least-square method. In addition, it works well for data to which we cannot apply the least-square method with a polynomial of low degree. By comparing the data on triangular lattices with the scaling function inferred from the data on square lattices, we confirm the universality of the finite-size scaling function of the two-dimensional Ising model.

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