Stop Oversampling for Class Imbalance Learning: A Review

被引:67
作者
Tarawneh, Ahmad S. [1 ]
Hassanat, Ahmad B. [2 ]
Altarawneh, Ghada Awad [3 ]
Almuhaimeed, Abdullah [4 ]
机构
[1] Eotvos Lorand Univ, Dept Algorithms & Their Applicat, H-1053 Budapest, Hungary
[2] Mutah Univ, Fac Informat Technol, Al Karak 61710, Jordan
[3] Mutah Univ, Dept Accounting, Al Karak 61710, Jordan
[4] King Abdulaziz City Sci & Technol, Natl Ctr Genom & Bioinformat, Riyadh 11442, Saudi Arabia
关键词
Machine learning; Training; Benchmark testing; Support vector machines; Search problems; Licenses; Image retrieval; Oversampling; SMOTE; imbalanced datasets; machine learning; Hassanat metric; CLASSIFICATION; SMOTE; REDUCTION; DIAGNOSIS; FEATURES; TREES;
D O I
10.1109/ACCESS.2022.3169512
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
For the last two decades, oversampling has been employed to overcome the challenge of learning from imbalanced datasets. Many approaches to solving this challenge have been offered in the literature. Oversampling, on the other hand, is a concern. That is, models trained on fictitious data may fail spectacularly when put to real-world problems. The fundamental difficulty with oversampling approaches is that, given a real-life population, the synthesized samples may not truly belong to the minority class. As a result, training a classifier on these samples while pretending they represent minority may result in incorrect predictions when the model is used in the real world. We analyzed a large number of oversampling methods in this paper and devised a new oversampling evaluation system based on hiding a number of majority examples and comparing them to those generated by the oversampling process. Based on our evaluation system, we ranked all these methods based on their incorrectly generated examples for comparison. Our experiments using more than 70 oversampling methods and nine imbalanced real-world datasets reveal that all oversampling methods studied generate minority samples that are most likely to be majority. Given data and methods in hand, we argue that oversampling in its current forms and methodologies is unreliable for learning from class imbalanced data and should be avoided in real-world applications.
引用
收藏
页码:47643 / 47660
页数:18
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