Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

MOELIGA: a multi-objective evolutionary approach for feature selection with local improvement

About

Selecting the most relevant or informative features is a key issue in actual machine learning problems. Since an exhaustive search is not feasible even for a moderate number of features, an intelligent search strategy must be employed for finding an optimal subset, which implies considering how features interact with each other in promoting class separability. Balancing feature subset size and classification accuracy constitutes a multi-objective optimization challenge. Here we propose MOELIGA, a multi-objective genetic algorithm incorporating an evolutionary local improvement strategy that evolves subordinate populations to refine feature subsets. MOELIGA employs a crowding-based fitness sharing mechanism and a sigmoid transformation to enhance diversity and guide compactness, alongside a geometry-based objective promoting classifier independence. Experimental evaluation on 14 diverse datasets demonstrates MOELIGA's ability to identify smaller feature subsets with superior or comparable classification performance relative to 11 state-of-the-art methods. These findings suggest MOELIGA effectively addresses the accuracy-dimensionality trade-off, offering a robust and adaptable approach for multi-objective feature selection in complex, high-dimensional scenarios.

Leandro Vignolo, Matias Gerard• 2026

Related benchmarks

TaskDatasetResultRank
Classificationderma (test)
Median UAR96
12
Classificationoptd (test)
Median UAR91
12
Classificationmove (test)
Median UAR80
12
Classificationarrh (test)
Median UAR67
12
Classificationsmart (test)
Median UAR88
12
Classificationmfeat (test)
Median UAR96
12
Classificationleuk (test)
Median UAR91
12
Classificationall-leuk (test)
Median UAR83
12
Classificationgcm (test)
Median UAR66
12
ClassificationTCGA (test)
Median UAR98
12
Showing 10 of 13 rows

Other info

Follow for update