Logical Reasoning for Revealing the Critical Temperature through Deep Learning of Configuration Ensemble of Statistical Systems
Autor: | Ken-Ichi Aoki, Tamao Kobayashi, Tatsuhiro Fujita |
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Jazyk: | angličtina |
Rok vydání: | 2019 |
Předmět: |
Structure (mathematical logic)
Phase transition Theoretical computer science Statistical Mechanics (cond-mat.stat-mech) Logical reasoning business.industry Computer science Deep learning High Energy Physics - Lattice (hep-lat) FOS: Physical sciences General Physics and Astronomy High Energy Physics - Lattice Physics::Space Physics Mathematics::Metric Geometry Artificial intelligence business Condensed Matter - Statistical Mechanics |
Popis: | Recently, there have been many works on the deep learning of statistical ensembles to determine the critical temperature of a possible phase transition. We analyze the detailed structure of an optimized deep learning machine and prove the basic equalities among the optimized machine parameters and the physical quantities of the statistical system. According to these equalities, we conclude that the bias parameters of the final full connection layer record the free energy of the statistical system as a function of temperature. We confirm these equalities in one- and two-dimensional Ising spin models and actually demonstrate that the deep learning machine reveals the critical temperature of the phase transition through the second difference of bias parameters, which is equivalent to the specific heat. Our results disprove the previous works claiming that the weight parameters of the full connection might play a role of the order parameter such as the spin expectation. |
Databáze: | OpenAIRE |
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