Unifying Machine Learning and Physics Models Through a Mesoscopic Field Approach

Authors

  • Dr. Xiaobin Wang

  • Dr. April Wang

Keywords:

Abstract

We present a path-integral methods field solution that merges machine learning with microscopic physics models for mesoscopic phenomena This interpretable multiscale algorithm treats physical and machine learning field solutions as equivalent enabling seamless integration of microscopic physics intomachine learning algorithms for mesoscopic pattern learning and generation Our approach incorporates microscopic physics mechanisms as hidden fields and represents their interactions with mesoscopic fields through auxiliary fields Rather than imposing statistical assumptions on hidden nodes and learning weight statistics from data our method derives a hidden fields formalism based on physics interaction mechanisms and determines connecting weights through action functional minimization and neural operators machine learning Combining the strengths of both physicsmodeling and machine learning techniques our method achieves strong performance in learning and generating mesoscopic patterns from limited data It can capture physics interactions occurring at different scales allowing forextrapolation when dealing with patterns with different interacting parameters and pattern evolution dynamics We demonstrate our solution through a concrete case of two interacting species with microscopic chain structures widely used for polymer material and biomolecular simulation Our mesoscopicfield approach unifying machine learning and physics modelscan be readily usedin various areas of material science biology and social dynamics

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How to Cite

Unifying Machine Learning and Physics Models Through a Mesoscopic Field Approach. (2025). Global Journal of Computer Science and Technology, 25(D1), 43-51. https://doi.org/10.34257/GJCSTDVOL25IS1PG43

References

Published

2025-10-13

How to Cite

Unifying Machine Learning and Physics Models Through a Mesoscopic Field Approach. (2025). Global Journal of Computer Science and Technology, 25(D1), 43-51. https://doi.org/10.34257/GJCSTDVOL25IS1PG43