2023
DOI: 10.7498/aps.72.20230896
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Reveal flocking phase transition of self-propelled active particles by machine learning regression uncertainty

Wei-Chen Guo,
Bao-Quan Ai,
Liang He

Abstract: We develop the neural network based “learning from regression uncertainty” approach for automated detection of phases of matter in nonequilibrium active systems. Taking the flocking phase transition of self-propelled active particles described by the Vicsek model for example, we find that after training a neural network for solving the inverse statistical problem, i.e., for performing the regression task of reconstructing the noise level from given samples of such a nonequilibrium many-body complex system’s st… Show more

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