Feeding the multitude: A polynomial-time algorithm to improve sampling of degenerate optimization problems

ORAL

Abstract

A wide variety of optimization techniques, both exact and heuristic, tend to be biased samplers. This means that when attempting to find multiple uncorrelated solutions of a degenerate Boolean optimization problem a subset of the solution space tends to be favored while, in the worst case, some solutions can never be accessed by the employed algorithm. Here we present a simple post-processing technique that improves sampling for any optimization technique. Starting from a pool of known optima, the algorithm generates potentially new solutions via rejection-free cluster updates at zero temperature. Although the method is not ergodic and there is no guarantee that any new states can be found, the solution pool is typically increased. We illustrate our results on exponentially-biased data produced on the D-Wave 2X quantum annealer.

Presenters

  • Helmut Katzgraber

    Texas A&M Univ, Department of Physics and Astronomy, Texas A&M University, Physics and Astronomy, Texas A&M University

Authors

  • Helmut Katzgraber

    Texas A&M Univ, Department of Physics and Astronomy, Texas A&M University, Physics and Astronomy, Texas A&M University

  • Andrew Ochoa

    Physics and Astronomy, Texas A&M Univ, Physics and Astronomy, Texas A&M University

  • Darryl Jacob

    Physics and Astronomy, Texas A&M University

  • Salvatore Mandra

    Quantum Artificial Intelligence Lab (QuAIL), NASA/Ames Res Ctr - SGT, NASA Ames Research Center