Interpreting machine learning functions as physical observables
G. Aarts*, D. Bachtis and B. Lucini
Pre-published on:
May 16, 2022
Published on:
July 08, 2022
Abstract
We propose to interpret machine learning functions as physical observables, opening up the possibility to apply “standard” statistical-mechanical methods to outputs from neural networks. This includes histogram reweighting and finite-size scaling, to analyse phase transitions quantitatively. In addition we incorporate predictive functions as conjugate variables coupled to an external field within the Hamiltonian of a system, allowing to induce order-disorder phase transitions in a novel manner. A noteworthy feature of this approach is that no knowledge of the symmetries in the Hamiltonian is required.
DOI: https://doi.org/10.22323/1.396.0248
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