DBSMOTE: Density-Based Synthetic Minority Over-sampling TEchnique

作者:Chumphol Bunkhumpornpat, Krung Sinapiromsaran, Chidchanok Lursinsap

摘要

A dataset exhibits the class imbalance problem when a target class has a very small number of instances relative to other classes. A trivial classifier typically fails to detect a minority class due to its extremely low incidence rate. In this paper, a new over-sampling technique called DBSMOTE is proposed. Our technique relies on a density-based notion of clusters and is designed to over-sample an arbitrarily shaped cluster discovered by DBSCAN. DBSMOTE generates synthetic instances along a shortest path from each positive instance to a pseudo-centroid of a minority-class cluster. Consequently, these synthetic instances are dense near this centroid and are sparse far from this centroid. Our experimental results show that DBSMOTE improves precision, F-value, and AUC more effectively than SMOTE, Borderline-SMOTE, and Safe-Level-SMOTE for imbalanced datasets.

论文关键词:Classification, Class imbalance, Over-sampling, Density-based

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论文官网地址:https://doi.org/10.1007/s10489-011-0287-y