Title
A novel learning-based binarization scheme selector for swarm algorithms solving combinatorial problems
Date Issued
01 November 2021
Access level
open access
Resource Type
journal article
Author(s)
Lemus-Romani J.
Becerra-Rozas M.
Crawford B.
Cisternas-Caneo F.
Vega E.
Castillo M.
Tapia D.
Astorga G.
Palma W.
Castro C.
García J.
Pontificia Universidad Católica de Valparaíso
Publisher(s)
MDPI
Abstract
Currently, industry is undergoing an exponential increase in binary-based combinatorial problems. In this regard, metaheuristics have been a common trend in the field in order to design approaches to successfully solve them. Thus, a well-known strategy includes the employment of continuous swarm-based algorithms transformed to perform in binary environments. In this work, we propose a hybrid approach that contains discrete smartly adapted population-based strategies to efficiently tackle binary-based problems. The proposed approach employs a reinforcement learning technique, known as SARSA (State–Action–Reward–State–Action), in order to utilize knowledge based on the run time. In order to test the viability and competitiveness of our proposal, we compare discrete state-of-the-art algorithms smartly assisted by SARSA. Finally, we illustrate interesting results where the proposed hybrid outperforms other approaches, thus, providing a novel option to tackle these types of problems in industry.
Volume
9
Issue
22
Language
English
OCDE Knowledge area
Robótica, Control automático Sistemas de automatización, Sistemas de control
Scopus EID
2-s2.0-85119111942
Source
Mathematics
ISSN of the container
22277390
Sponsor(s)
The APC was funded by Grant ANID/FONDECYT/REGULAR/1210810. Broderick Crawford, Wenceslao Palma and Gino Astorga are supported by Grant ANID/FONDECYT/REGULAR/1210810. Ricardo Soto is supported by grant CONICYT/FONDECYT/ REGULAR/1190129. José Lemus-Romani is supported by National Agency for Research and Development (ANID)/ Scholarship Program/DOCTORADO NACIONAL/2019-21191692. Marcelo Becerra-Rozas is supported by National Agency for Research and Development (ANID)/ Scholarship Pro-gram/DOCTORADO NACIONAL/2021-21210740. Emanuel Vega is supported by National Agency for Research and Development ANID/Scholarship Program/DOCTORADO NACIONAL/2020-21202527. José García was supported by the Grant CONICYT/FONDECYT/INICIACION/11180056. José García acknowledge funding provided by DI Interdisciplinaria Pontificia Universidad Católica de Valparaíso (PUCV). Valparaíso (PUCV), 039.414/2021. Broderick Crawford, Ricardo Soto and Marcelo Becerra-Rozas are supported by Grant Nucleo de Investigacion en Data Analytics/VRIEA/PUCV/ 039.432/2020. Marcelo Becerra-Rozas are supported by Grant DI Investigación Interdisciplinaria del Pregrado/VRIEA/PUCV/039.421/2021. Data Availability Statement: You can find the code used and replicate the results in: https://github.com/joselemusr/BSS-QL Acknowledgments: Broderick Crawford, Wenceslao Palma and Gino Astorga are supported by Grant ANID/FONDECYT/REGULAR/1210810. Ricardo Soto is supported by grant CONICYT/FONDECYT/ REGULAR/1190129. José Lemus-Romani is supported by National Agency for Research and Development (ANID)/ Scholarship Program/DOCTORADO NACIONAL/2019-21191692. Marcelo Becerra-Rozas is supported by National Agency for Research and Development (ANID)/ Scholarship Program/DOCTORADO NACIONAL/2021-21210740. Emanuel Vega is supported by National Agency for Research and Development ANID/Scholarship Program/DOCTORADO NACIONAL/2020-21202527. José García was supported by the Grant CONICYT/FONDECYT/INICIACION/11180056. José García acknowledge funding provided by DI Interdisciplinaria Pontificia Universidad Católica de Valparaíso (PUCV). Valparaíso (PUCV), 039.414/2021. Broderick Crawford, Ricardo Soto and Marcelo Becerra-Rozas are supported by Grant Nucleo de Investigacion en Data Analytics/VRIEA/PUCV/ 039.432/2020. Marcelo Becerra-Rozas are supported by Grant DI Investigación Interdisciplinaria del Pregrado/VRIEA/PUCV/039.421/2021.
Sources of information: Directorio de Producción Científica Scopus