Indonesian Journal of Electrical Engineering and Computer Science
Vol 39, No 2: August 2025

Binary white shark optimization algorithm with Z-shaped transfer function for feature selection problems

Rao, Avinash Nagaraja (Unknown)
Sinha, Sitesh Kumar (Unknown)
Mallaiah, Shivamurthaiah (Unknown)



Article Info

Publish Date
01 Aug 2025

Abstract

Feature selection is critical for improving model performance and managing high-dimensional data, yet existing methods often face limitations such as inefficiency and suboptimal results. This study addresses these challenges by introducing a novel approach using the white shark optimization (WSO) algorithm and its binary variants to enhance feature selection. The proposed methods are evaluated on various datasets, including “Dorothea,” “Breast Cancer,” and “Arrhythmia,” focusing on classification accuracy, the number of features selected, and fitness values. Results demonstrate that the WSO algorithms significantly outperform traditional methods, offering notable improvements in accuracy and efficiency. Specifically, the WSO variants consistently achieve higher accuracy and better fitness values while effectively reducing the number of selected features. This research contributes to the field by providing a more effective optimization approach for feature selection, addressing existing inefficiencies, and suggesting future directions for further refinement and broader application. The findings highlight the potential of advanced optimization techniques in enhancing data analysis and model performance, offering valuable insights for practitioners and researchers.

Copyrights © 2025