Abstract
There has been growing excitement over the possibility of employing artificial neural networks (ANNs) to gain new theoretical insight into the physics of quantum many-body problems. ``Interpretability'' remains a concern: can we understand the basis for the ANN's decision-making criteria in order to inform our theoretical understanding? ``Interpretable'' machine learning in quantum matter has to date been restricted to linear models, such as support vector machines, due to the greater difficulty of interpreting non-linear ANNs. Here we consider topological quantum phase transitions in models of Chern insulator, $\mathbb{Z}_2$ topological insulator, and $\mathbb{Z}_2$ quantum spin liquid, each using a shallow fully connected feed-forward ANN. The use of quantum loop topography, a ``domain knowledge''-guided approach to feature selection, facilitates the construction of faithful phase diagrams and semi-quantitative interpretation of the criteria in certain cases. To identify the topological phases, the ANNs learn physically meaningful features, such as topological invariants and deconfinement of loops. The interpretability in these cases suggests hope for theoretical progress based on future uses of ANN-based machine learning on quantum many-body problems.
Highlights
Given the simplicity of our artificial neural networks (ANNs), and its ability to interpolate between quantum loop topography (QLT) and the topological phases of interest, it is plausible that insight into this physics can be derived by probing the “interior” of the ANN to illuminate properties of the function it has learned
We studied the interpretability of machine learning in the context of three distinct topological quantum phase transitions learned by shallow, fully connected feedforward ANNs
The quantum phase transitions of interest are between topologically trivial states and a Chern insulator (CI), topological insulator (TI), and quantum spin liquid (QSL), respectively
Summary
There has been much recent activity in the quantum matter community applying ANN-based machine learning (ML) to synthetic [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23] and experimental [24,25,26,27] quantum matter data. Given the simplicity of our ANN, and its ability to interpolate between QLT and the topological phases of interest, it is plausible that insight into this physics can be derived by probing the “interior” of the ANN to illuminate properties of the function it has learned.
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