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Applying the Quantum Approximate Optimization Algorithm to the Tail Assignment Problem: part 2

ORAL

Abstract

We investigate the Quantum Approximate Optimization Algorithm (QAOA) applied to the Exact Cover and Set Partitioning problem with multiple feasible solutions. The problem instances have been extracted from real world aircraft assignment problems. For the Exact Cover problem our numerical results indicate that for a given success probability of finding a feasible solution the required algorithm depth decreases with the number of feasible solutions. For the Set Partitioning problem on the other hand, we find that for a given success probability of finding the optimal solution the required algorithm depth can increase with the number of feasible solutions, which in the worst case is exponential in the problem size. We also address the importance of properly weighting the objective and constraint parts of the Hamiltonian when solving the Set Partitioning problem since these weights have a significant impact on the QAOA performance.

Presenters

  • Marika Svensson

    Jeppesen

Authors

  • Marika Svensson

    Jeppesen

  • Martin Andersson

    Jeppesen, Jeppesen Systems AB

  • Mattias Grönkvist

    Jeppesen, Jeppesen Systems AB

  • Pontus Vikstål

    Wallenberg Centre for Quantum Technology, Department of Microtechnology and Nanoscience, Chalmers University of Technology, Chalmers Univ of Tech

  • Devdatt Dubhashi

    Department of Computer Science and Engineering, Chalmers University of Technology

  • Giulia Ferrini

    Chalmers Univ of Tech, Department of Microtechnology and Nanoscience, Chalmers University of Technology, Wallenberg Centre for Quantum Technology, Department of Microtechnology and Nanoscience, Chalmers University of Technology

  • Göran Johansson

    Chalmers Univ of Tech, Wallenberg Centre for Quantum Technology, Department of Microtechnology and Nanoscience, Chalmers University of Technology