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Solving quantum statistical mechanics with variational autoregressive networks and quantum circuits

Jin-Guo Liu, Liang Mao, Pan Zhang, Lei Wang

2020Machine Learning Science and Technology64 citationsDOIOpen Access PDF

Abstract

Abstract We extend the ability of an unitary quantum circuit by interfacing it with a classical autoregressive neural network. The combined model parametrizes a variational density matrix as a classical mixture of quantum pure states, where the autoregressive network generates bitstring samples as input states to the quantum circuit. We devise an efficient variational algorithm to jointly optimize the classical neural network and the quantum circuit to solve quantum statistical mechanics problems. One can obtain thermal observables such as the variational free energy, entropy, and specific heat. As a byproduct, the algorithm also gives access to low energy excitation states. We demonstrate applications of the approach to thermal properties and excitation spectra of the quantum Ising model with resources that are feasible on near-term quantum computers.

Topics & Concepts

Autoregressive modelStatistical physicsQuantum circuitQuantumQuantum networkQuantum computerStatistical mechanicsInterfacingDensity matrixArtificial neural networkComputer scienceQuantum mechanicsMathematicsPhysicsArtificial intelligenceComputer hardwareEconometricsQuantum Computing Algorithms and ArchitectureQuantum many-body systemsQuantum Information and Cryptography