AI Article Synopsis

  • The FOX algorithm is a new metaheuristic inspired by fox behavior but can get stuck in local optima when solving complex problems due to its weak exploitation abilities.
  • This research enhances the FOX algorithm for feature selection using an improved method called FOX-GWO, which combines it with the Grey Wolf Optimizer to strengthen its local search capabilities.
  • The FOX-GWO outperformed the basic FOX algorithm in 83.33% of tested datasets for accuracy, 61.11% in reducing feature dimensionality, and 72.22% for fitness, making it a powerful tool for high-dimensional data analysis and improving predictive model performance.

Article Abstract

The FOX algorithm is a recently developed metaheuristic approach inspired by the behavior of foxes in their natural habitat. While the FOX algorithm exhibits commendable performance, its basic version, in complex problem scenarios, may become trapped in local optima, failing to identify the optimal solution due to its weak exploitation capabilities. This research addresses a high-dimensional feature selection problem. In feature selection, the most informative features are retained while discarding irrelevant ones. An enhanced version of the FOX algorithm is proposed, aiming to mitigate its drawbacks in feature selection. The improved approach referred to as S-shaped Grey Wolf Optimizer-based FOX (FOX-GWO), which focuses on augmenting the local search capabilities of the FOX algorithm via the integration of GWO. Additionally, the introduction of an S-shaped transfer function enables the population to explore both binary options throughout the search process. Through a series of experiments on 18 datasets with varying dimensions, FOX-GWO outperforms in 83.33 % of datasets for average accuracy, 61.11 % for reduced feature dimensionality, and 72.22 % for average fitness value across the 18 datasets. Meaning it efficiently explores high-dimensional spaces. These findings highlight its practical value and potential to advance feature selection in complex data analysis, enhancing model prediction accuracy.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10825485PMC
http://dx.doi.org/10.1016/j.heliyon.2024.e24192DOI Listing

Publication Analysis

Top Keywords

fox algorithm
20
feature selection
20
s-shaped grey
8
grey wolf
8
wolf optimizer-based
8
optimizer-based fox
8
fox
6
feature
6
algorithm
5
selection
5

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!