Nature Communications (Jun 2021)
Correlator convolutional neural networks as an interpretable architecture for image-like quantum matter data
Abstract
Physical principles underlying machine learning analysis of quantum gas microscopy data are not well understood. Here the authors develop a neural network based approach to classify image data in terms of multi-site correlation functions and reveal the role of fourth-order correlations in the Fermi-Hubbard model.