On the class overlap problem in imbalanced data classification

作者:

Highlights:

摘要

Class imbalance is an active research area in the machine learning community. However, existing and recent literature showed that class overlap had a higher negative impact on the performance of learning algorithms. This paper provides detailed critical discussion and objective evaluation of class overlap in the context of imbalanced data and its impact on classification accuracy. First, we present a thorough experimental comparison of class overlap and class imbalance. Unlike previous work, our experiment was carried out on the full scale of class overlap and an extreme range of class imbalance degrees. Second, we provide an in-depth critical technical review of existing approaches to handle imbalanced datasets. Existing solutions from selective literature are critically reviewed and categorised as class distribution-based and class overlap-based methods. Emerging techniques and the latest development in this area are also discussed in detail. Experimental results in this paper are consistent with existing literature and show clearly that the performance of the learning algorithm deteriorates across varying degrees of class overlap whereas class imbalance does not always have an effect. The review emphasises the need for further research towards handling class overlap in imbalanced datasets to effectively improve learning algorithms’ performance.

论文关键词:Imbalanced data,Class overlap,Classification,Evaluation metric,Benchmark

论文评审过程:Received 5 February 2020, Revised 25 November 2020, Accepted 25 November 2020, Available online 27 November 2020, Version of Record 1 December 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2020.106631