Interpretable and unsupervised phase classification

9 Oct 2020  ·  Julian Arnold, Frank Schäfer, Martin Žonda, Axel U. J. Lode ·

Fully automated classification methods that yield direct physical insights into phase diagrams are of current interest. Here, we demonstrate an unsupervised machine learning method for phase classification which is rendered interpretable via an analytical derivation of its optimal predictions and allows for an automated construction scheme for order parameters. Based on these findings, we propose and apply an alternative, physically-motivated, data-driven scheme which relies on the difference between mean input features. This mean-based method is computationally cheap and directly interpretable. As an example, we consider the physically rich ground-state phase diagram of the spinless Falicov-Kimball model.

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Disordered Systems and Neural Networks Strongly Correlated Electrons Quantum Physics