Machine-learning-assisted Monte Carlo fails at sampling computationally hard problems

Ciarella, Simone and Trinquier, Jeanne and Weigt, Martin and Zamponi, Francesco (2023) Machine-learning-assisted Monte Carlo fails at sampling computationally hard problems. Machine Learning: Science and Technology, 4 (1). 010501. ISSN 2632-2153

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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.

Item Type: Article
Subjects: Pustakas > Multidisciplinary
Depositing User: Unnamed user with email support@pustakas.com
Date Deposited: 11 Oct 2023 05:42
Last Modified: 11 Oct 2023 05:42
URI: http://archive.pcbmb.org/id/eprint/968

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