JOURNAL ARTICLE

Multiobjective Fuzzy Genetics-Based Machine Learning for Multi-Label Classification

Abstract

In multi-label classification problems, multiple class labels are assigned to each instance. Two approaches have been studied in the literature. One is a data transformation approach, which transforms a multi-label dataset into a number of singlelabel datasets. However, this approach often loses the correlation information among classes in the multi-class assignment. The other is a method adaptation approach where a conventional classification method is extended to multi-label classification. Recently, some explainable classification models for multi-label classification have been proposed. Their high interpretability has also been discussed with respect to the transparency of the classification process. Although the explainability is a well-known advantage of fuzzy systems, their applications to multi-label classification have not been well studied. Since multi-label classification problems often have vague class boundaries, fuzzy systems seem to be a promising approach to multi-label classification. In this paper, we propose a new multiobjective evolutionary fuzzy system, which can be categorized as a method adaptation approach. The proposed algorithm produces nondominated classifiers with different tradeoffs between accuracy and complexity. We examine the behavior of the proposed algorithm using synthetic multi-label datasets. We also compare the proposed algorithm with five representative algorithms. Our experimental results on real-world datasets show that the obtained fuzzy classifiers with a small number of fuzzy rules have high transparency and comparable generalization ability to the other examined multi-label classification algorithms.

Keywords:
Interpretability Artificial intelligence Multi-label classification Computer science Machine learning Fuzzy logic Class (philosophy) Generalization Data mining Fuzzy classification Statistical classification Pattern recognition (psychology) Fuzzy set Mathematics

Metrics

12
Cited By
1.03
FWCI (Field Weighted Citation Impact)
27
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0.81
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