An Enhanced Binary Rat Swarm Optimizer based on Local-best Concepts of PSO and Collaborative Crossover Operators for Feature Selection

No Thumbnail Available

Authors

Abou Doush, Iyad

Issue Date

2022-06-02

Type

Peer Reviewed
Journal Article

Language

Keywords

Research Projects

Organizational Units

Journal Issue

Alternative Title

Abstract

In this paper, an enhanced binary version of the Rat Swarm Optimizer (RSO) is proposed to deal with Feature Selection (FS) problems. FS is an important data reduction step in data mining which finds the most representative features from the entire data. Many FS-based swarm intelligence algorithms have been used to tackle FS. However, the door is still open for further investigations since no FS method gives cutting-edge results for all cases. In this paper, a recent swarm intelligence metaheuristic method called RSO which is inspired by the social and hunting behavior of a group of rats is enhanced and explored for FS problems. The binary enhanced RSO is built based on three successive modifications: i) an S-shape transfer function is used to develop binary RSO algorithms; ii) the local search paradigm of particle swarm optimization is used with the iterative loop of RSO to boost its local exploitation; iii) three crossover mechanisms are used and controlled by a switch probability to improve the diversity. Based on these enhancements, three versions of RSO are produced, referred to as Binary RSO (BRSO), Binary Enhanced RSO (BERSO), and Binary Enhanced RSO with Crossover operators (BERSOC). To assess the performance of these versions, a benchmark of 24 datasets from various domains is used. The proposed methods are assessed concerning the fitness value, number of selected features, classification accuracy, specificity, sensitivity, and computational time. The best performance is achieved by BERSOC followed by BERSO and then BRSO. These proposed versions are comparatively assessed against 25 well-regardedĂ‚ metaheuristicĂ‚ methods and five filter-based approaches. The obtained results underline their superiority by producing new best results for some datasets.

Description

Citation

Awadallah, M. A., Al-Betar, M. A., Braik, M. S., Hammouri, A. I., Doush, I. A., & Zitar, R. A. (2022). An enhanced binary Rat Swarm Optimizer based on local-best concepts of PSO and collaborative crossover operators for feature selection. Computers in Biology and Medicine, 147, 105675. https://doi.org/10.1016/j.compbiomed.2022.105675

Publisher

Computers in Biology and Medicine

License

Journal

Volume

Issue

PubMed ID

DOI

ISSN

EISSN