Loop corrections in spin models through density consistency
October 24, 2018 Β· Declared Dead Β· π Physical Review Letters
"No code URL or promise found in abstract"
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Authors
Alfredo Braunstein, Giovanni Catania, Luca Dall'Asta
arXiv ID
1810.10602
Category
cond-mat.stat-mech
Cross-listed
cond-mat.dis-nn,
cs.LG,
physics.comp-ph
Citations
6
Venue
Physical Review Letters
Last Checked
3 months ago
Abstract
Computing marginal distributions of discrete or semidiscrete Markov random fields (MRFs) is a fundamental, generally intractable problem with a vast number of applications in virtually all fields of science. We present a new family of computational schemes to approximately calculate the marginals of discrete MRFs. This method shares some desirable properties with belief propagation, in particular, providing exact marginals on acyclic graphs, but it differs with the latter in that it includes some loop corrections; i.e., it takes into account correlations coming from all cycles in the factor graph. It is also similar to the adaptive Thouless-Anderson-Palmer method, but it differs with the latter in that the consistency is not on the first two moments of the distribution but rather on the value of its density on a subset of values. The results on finite-dimensional Isinglike models show a significant improvement with respect to the Bethe-Peierls (tree) approximation in all cases and with respect to the plaquette cluster variational method approximation in many cases. In particular, for the critical inverse temperature $Ξ²_{c}$ of the homogeneous hypercubic lattice, the expansion of $\left(dΞ²_{c}\right)^{-1}$ around $d=\infty$ of the proposed scheme is exact up to the $d^{-4}$ order, whereas the two latter are exact only up to the $d^{-2}$ order.
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