Abstract

Quantum annealers, such as the device built by D-Wave Systems, Inc., offer a way to compute solutions of NP-hard problems that can be expressed in Ising or quadratic unconstrained binary optimization (QUBO) form. Although such solutions are typically of very high quality, problem instances are usually not solved to optimality due to imperfections of the current generations quantum annealers. In this contribution, we aim to understand some of the factors contributing to the hardness of a problem instance, and to use machine learning models to predict the accuracy of the D-Wave 2000Q annealer for solving specific problems. We focus on the maximum clique problem, a classic NP-hard problem with important applications in network analysis, bioinformatics, and computational chemistry. By training a machine learning classification model on basic problem characteristics such as the number of edges in the graph, or annealing parameters, such as the D-Wave’s chain strength, we are able to rank certain features in the order of their contribution to the solution hardness, and present a simple decision tree which allows to predict whether a problem will be solvable to optimality with the D-Wave 2000Q. We extend these results by training a machine learning regression model that predicts the clique size found by D-Wave.

Highlights

  • Received: May 2021Accepted: June 2021Published: 21 June 2021Publisher’s Note: MDPI stays neutralQuantum annealing is an emerging technology with the potential to provide high quality solutions to NP-hard problems

  • We aim to understand some of the factors contributing to the hardness of a problem instance sent to the D-Wave 2000Q annealer

  • We focus on the maximum clique (MC) problem, and train several machine learning models on several thousand randomly generated input problems with the aim to learn features to (a) predict if D-Wave 2000Q

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Summary

Introduction

Received: May 2021Accepted: June 2021Published: 21 June 2021Publisher’s Note: MDPI stays neutralQuantum annealing is an emerging technology with the potential to provide high quality solutions to NP-hard problems. D-Wave Systems, Inc., the D-Wave 2000Q annealer, designed to minimize functions of the following form, with regard to jurisdictional claims in N

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