A Group-Equivariant Autoencoder for Identifying Spontaneously Broken Symmetries
Devanshu Agrawal, Adrian Del Maestro, Steven Johnston, James Ostrowski

TL;DR
This paper introduces a group-equivariant autoencoder that leverages symmetry principles to identify phase boundaries and spontaneous symmetry breaking in physical systems, improving accuracy and efficiency over traditional methods.
Contribution
The paper presents a novel GE-autoencoder that incorporates symmetry constraints to detect symmetry breaking and phase transitions more effectively than existing autoencoders.
Findings
Accurately determines spontaneously broken symmetries at various temperatures
Estimates critical temperatures with higher accuracy and robustness
Detects external symmetry-breaking fields with greater sensitivity
Abstract
We introduce the group-equivariant autoencoder (GE-autoencoder) -- a deep neural network (DNN) method that locates phase boundaries by determining which symmetries of the Hamiltonian have spontaneously broken at each temperature. We use group theory to deduce which symmetries of the system remain intact in all phases, and then use this information to constrain the parameters of the GE-autoencoder such that the encoder learns an order parameter invariant to these ``never-broken'' symmetries. This procedure produces a dramatic reduction in the number of free parameters such that the GE-autoencoder size is independent of the system size. We include symmetry regularization terms in the loss function of the GE-autoencoder so that the learned order parameter is also equivariant to the remaining symmetries of the system. By examining the group representation by which the learned order…
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Taxonomy
TopicsQuantum many-body systems · Theoretical and Computational Physics · Machine Learning in Materials Science
