Reduced Density Matrices Through Machine Learning
Awwab A. Azam, Lexu Zhao, Jiabin Yu

TL;DR
This paper demonstrates that neural networks can effectively interpolate and predict reduced density matrices for large, strongly-correlated quantum systems, significantly reducing computational costs and enabling new research avenues.
Contribution
The authors introduce neural network architectures that predict $n$-RDMs for large systems based on training on small systems, enabling efficient analysis of strongly correlated phases.
Findings
Neural networks predict $n$-RDMs with over 93% accuracy for large systems.
NN-based initial guesses reduce Hartree-Fock iteration counts by over 90%.
The approach is validated on multiple 2D models, showing broad applicability.
Abstract
-particle reduced density matrices (-RDMs) play a central role in understanding correlated phases of matter, but their calculation is often computationally inefficient for strongly-correlated states at large system sizes. In this work, we use neural network (NN) architectures to accelerate and even predict -RDMs for large systems. Our underlying intuition is that, for gapped states, -RDMs are often smooth functions over the Brillouin zone (BZ) and are therefore interpolable, allowing NNs trained on small-size systems to predict large-size ones. Building on this, we devise two NNs: (i) a self-attention NN that maps random RDMs to physical ones, and (ii) a Sinusoidal Representation Network (SIREN) that directly maps momentum-space coordinates to RDM values. We test the NNs on RDMs in three 2D models: the pair-pair correlation functions of the Richardson model of…
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Taxonomy
TopicsQuantum many-body systems · Machine Learning in Materials Science · Physics of Superconductivity and Magnetism
