Q-learnheuristics: Towards data-driven balanced metaheuristics

Crawford, Broderick; Soto, Ricardo; Lemus-Romani, Jose; Becerra-Rozas, Marcelo; Lanza-Gutierrez, Jose M.; Caballe, Nuria; Castillo, Mauricio; Tapia, Diego; Cisternas-Caneo, Felipe; Garcia, Jose; Astorga, Gino; Castro, Carlos; Rubio, Jose-Miguel

Abstract

© 2021 by the authors. Licensee MDPI, Basel, Switzerland.One of the central issues that must be resolved for a metaheuristic optimization process to work well is the dilemma of the balance between exploration and exploitation. The metaheuristics (MH) that achieved this balance can be called balanced MH, where a Q-Learning (QL) integration framework was proposed for the selection of metaheuristic operators conducive to this balance, particularly the selection of binarization schemes when a continuous metaheuristic solves binary combinatorial problems. In this work the use of this framework is extended to other recent metaheuristics, demonstrating that the integration of QL in the selection of operators improves the explorationexploitation balance. Specifically, the Whale Optimization Algorithm and the Sine-Cosine Algorithm are tested by solving the Set Covering Problem, showing statistical improvements in this balance and in the quality of the solutions.

Más información

Título según WOS: Q-learnheuristics: Towards data-driven balanced metaheuristics
Título de la Revista: MATHEMATICS
Volumen: 9
Número: 16
Editorial: MDPI
Fecha de publicación: 2021
DOI:

10.3390/MATH9161839

Notas: ISI