Physical Review X (May 2018)

Quantum Boltzmann Machine

  • Mohammad H. Amin,
  • Evgeny Andriyash,
  • Jason Rolfe,
  • Bohdan Kulchytskyy,
  • Roger Melko

DOI
https://doi.org/10.1103/PhysRevX.8.021050
Journal volume & issue
Vol. 8, no. 2
p. 021050

Abstract

Read online Read online

Inspired by the success of Boltzmann machines based on classical Boltzmann distribution, we propose a new machine-learning approach based on quantum Boltzmann distribution of a quantum Hamiltonian. Because of the noncommutative nature of quantum mechanics, the training process of the quantum Boltzmann machine (QBM) can become nontrivial. We circumvent the problem by introducing bounds on the quantum probabilities. This allows us to train the QBM efficiently by sampling. We show examples of QBM training with and without the bound, using exact diagonalization, and compare the results with classical Boltzmann training. We also discuss the possibility of using quantum annealing processors for QBM training and application.