作者
Alberto Fernández, Salvador Garcıa, Francisco Herrera, Nitesh V Chawla
发表日期
2018/8/31
期刊
Journal of Artificial Intelligence Research
卷号
61
页码范围
pages 863-905
简介
The Synthetic Minority Oversampling Technique (SMOTE) preprocessing algorithm is considered "de facto" standard in the framework of learning from imbalanced data. This is due to its simplicity in the design of the procedure, as well as its robustness when applied to different type of problems. Since its publication in 2002, SMOTE has proven successful in a variety of applications from several different domains. SMOTE has also inspired several approaches to counter the issue of class imbalance, and has also significantly contributed to new supervised learning paradigms, including multilabel classification, incremental learning, semi-supervised learning, multi-instance learning, among others. It is standard benchmark for learning from imbalanced data. It is also featured in a number of different software packages -- from open source to commercial. In this paper, marking the fifteen year anniversary of SMOTE, we reect on the SMOTE journey, discuss the current state of affairs with SMOTE, its applications, and also identify the next set of challenges to extend SMOTE for Big Data problems.
引用总数
20182019202020212022202320242982168259391482235
学术搜索中的文章
A Fernández, S Garcia, F Herrera, NV Chawla - Journal of artificial intelligence research, 2018