Abstract
Abstract
Several strategies have been recently proposed in order to improve Monte Carlo sampling efficiency using machine learning tools. Here, we challenge these methods by considering a class of problems that are known to be exponentially hard to sample using conventional local Monte Carlo at low enough temperatures. In particular, we study the antiferromagnetic Potts model on a random graph, which reduces to the coloring of random graphs at zero temperature. We test several machine-learning-assisted Monte Carlo approaches, and we find that they all fail. Our work thus provides good benchmarks for future proposals for smart sampling algorithms.
Funder
H2020 European Research Council
Subject
Artificial Intelligence,Human-Computer Interaction,Software
Reference57 articles.
1. Rigorous inequalities between length and time scales in glassy systems;Montanari;J. Stat. Phys.,2006
2. New Monte Carlo methods for improved efficiency of computer simulations in statistical mechanics;Swendsen,1992
3. Cluster Monte Carlo algorithms for diluted spin glasses;Jörg;Prog. Theor. Phys. Suppl.,2005
4. Efficient cluster algorithm for spin glasses in any space dimension;Zhu;Phys. Rev. Lett.,2015
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