cris.boxmetadata.label.title
A Db-scan binarization algorithm applied to matrix covering problems
cris.boxmetadata.label.dateissued
01 browse.startsWith.months.january 2019
cris.boxmetadata.label.accesslevel
open access
cris.boxmetadata.label.resourcetype
journal article
cris.boxmetadata.label.authors
GarcÃa J.
Moraga P.
Valenzuela M.
Crawford B.
Pinto H.
Peña A.
Altimiras F.
Astorga G.
Pontificia Universidad Católica de ValparaÃso
cris.boxmetadata.label.publisher
Hindawi Limited
cris.boxmetadata.label.abstract
The integration of machine learning techniques and metaheuristic algorithms is an area of interest due to the great potential for applications. In particular, using these hybrid techniques to solve combinatorial optimization problems (COPs) to improve the quality of the solutions and convergence times is of great interest in operations research. In this article, the db-scan unsupervised learning technique is explored with the goal of using it in the binarization process of continuous swarm intelligence metaheuristic algorithms. The contribution of the db-scan operator to the binarization process is analyzed systematically through the design of random operators. Additionally, the behavior of this algorithm is studied and compared with other binarization methods based on clusters and transfer functions (TFs). To verify the results, the well-known set covering problem is addressed, and a real-world problem is solved. The results show that the integration of the db-scan technique produces consistently better results in terms of computation time and quality of the solutions when compared with TFs and random operators. Furthermore, when it is compared with other clustering techniques, we see that it achieves significantly improved convergence times.
cris.boxmetadata.label.volume
2019
cris.boxmetadata.label.language
English
cris.boxmetadata.label.doi
cris.boxmetadata.label.scopusidentifier
2-s2.0-85072968932
cris.boxmetadata.label.pubmedidentifier
cris.boxmetadata.label.source
Computational Intelligence and Neuroscience
cris.boxmetadata.label.containerissn
16875265
peru-layout.shadow-copies
Directorio de Producción CientÃfica
Scopus