Machine Learning Matrix Product State Ansatz for strongly correlated systems

08 June 2022, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Machine learning (ML) has been used to optimize the matrix product state (MPS) ansatz for wavefunction of strongly correlated systems. The ML optimization of MPS has been tested for Heisenberg Hamiltonian on one-dimensional and ladder lattices which correspond to conjugated molecular systems. The input descriptors and output for the supervised ML are lattice configurations and configuration interaction coefficients, respectively. Efficient learning can be achieved from data over the full Hilbert space via exact diagonalization or full configuration interaction (FCI), as well as over a much smaller sub-space via Monte Carlo Configuration Interaction (MCCI). We show that this circumvents the need to calculate energy and operator expectation values, and is therefore, a computationally efficient alternative to variational optimization.

Keywords

machine learning
matrix product state

Supplementary materials

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Supplementary Information
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Comparison of ANN and MPS ansatz for machine learning.
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