Frontiers in Computer Science (Dec 2023)

Individual subject evaluated difficulty of adjustable mazes generated using quantum annealing

  • Yuto Ishikawa,
  • Takuma Yoshihara,
  • Keita Okamura,
  • Masayuki Ohzeki,
  • Masayuki Ohzeki,
  • Masayuki Ohzeki

DOI
https://doi.org/10.3389/fcomp.2023.1285962
Journal volume & issue
Vol. 5

Abstract

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In this study, the maze generation using quantum annealing is proposed. We reformulate a standard algorithm to generate a maze into a specific form of a quadratic unconstrained binary optimization problem suitable for the input of the quantum annealer. To generate more difficulty mazes, we introduce an additional cost function Qupdate to increase the difficulty. The difficulty of the mazes was evaluated by the time to solve the maze of 12 human subjects. To check the efficiency of our scheme to create the maze, we investigated the time-to-solution of a quantum processing unit, classical computer, and hybrid solver. The results show that Qupdate generates difficult mazes tailored to the individual. Furthermore, it show that the quantum processing unit is more efficient at generating mazes than other solvers. Finally, we also present applications how our results could be used in the future.

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