4.6 Article

Multi-objective optimization-based adaptive class-specific cost extreme learning machine for imbalanced classification

期刊

NEUROCOMPUTING
卷 496, 期 -, 页码 107-120

出版社

ELSEVIER
DOI: 10.1016/j.neucom.2022.05.008

关键词

Imbalanced classification; Cost-sensitive learning; Extreme learning machine; Multi-objective optimization

资金

  1. National Natural Science Foundation of China [62003038]
  2. National Key Research and Development Program of China [2017YFB1401203]

向作者/读者索取更多资源

This paper presents a multi-objective optimization-based adaptive class-specific cost extreme learning machine (MOAC-ELM) method for imbalanced classification problems. By considering the costs of different classes and enhancing the representation of the minority class using penalty factors, the class-specific costs are automatically determined. The proposed MOAC-ELM shows good robustness and generalization performance in imbalanced classification tasks, as demonstrated by comprehensive experiments.
Imbalanced classification is a challenging task in the fields of machine learning and data mining. Cost-sensitive learning can tackle this issue by considering different misclassification costs of classes. Weighted extreme learning machine (W-ELM) takes a cost-sensitive strategy to alleviate the learning bias towards the majority class to achieve better classification performance. However, W-ELM may not achieve the optimal weights for the samples from different classes due to the adoption of empirical costs. In order to solve this issue, multi-objective optimization-based adaptive class-specific cost extreme learning machine (MOAC-ELM) is presented in this paper. To be specific, the initial weights are first assigned depending on the class information. Based on that, the representation of the minority class could be enhanced by adding penalty factors. In addition, a multi-objective optimization with respect to penalty factors is formulated to automatically determine the class-specific costs, in which multiple performance criteria are constructed by comprehensively considering the misclassification rate and generalization gap. Finally, ensemble strategy is implemented to make decisions after optimization. Accordingly, the proposed MOAC-ELM is an adaptive method with good robustness and generalization performance for imbalanced classification problems. Comprehensive experiments have been performed on several benchmark datasets and a real-world application dataset. The statistical results demonstrate that MOAC-ELM can achieve competitive results on classification performance. (C) 2022 Elsevier B.V. All rights reserved.

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