Interpretable Phase Detection and Classification with Persistent Homology
2020-12-01NeurIPS Workshop TDA_and_Beyond 2020Unverified0· sign in to hype
Alex Cole, Gregory J. Loges, Gary Shiu
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We apply persistent homology to the task of discovering and characterizing phase transitions, using lattice spin models from statistical physics for working examples. Persistence images provide a useful representation of the homological data for conducting statistical tasks. To identify the phase transitions, a simple logistic regression on these images is sufficient for the models we consider, and interpretable order parameters are then read from the weights of the regression. Magnetization, frustration and vortex-antivortex structure are identified as relevant features for characterizing phase transitions.