Litcius/Paper detail

Selective oversampling approach for strongly imbalanced data

Peter Gnip, Liberios Vokorokos, Peter Drotár

2021PeerJ Computer Science89 citationsDOIOpen Access PDF

Abstract

Challenges posed by imbalanced data are encountered in many real-world applications. One of the possible approaches to improve the classifier performance on imbalanced data is oversampling. In this paper, we propose the new selective oversampling approach (SOA) that first isolates the most representative samples from minority classes by using an outlier detection technique and then utilizes these samples for synthetic oversampling. We show that the proposed approach improves the performance of two state-of-the-art oversampling methods, namely, the synthetic minority oversampling technique and adaptive synthetic sampling. The prediction performance is evaluated on four synthetic datasets and four real-world datasets, and the proposed SOA methods always achieved the same or better performance than other considered existing oversampling methods.

Topics & Concepts

OversamplingComputer scienceClassifier (UML)OutlierArtificial intelligenceMachine learningSynthetic dataData miningPattern recognition (psychology)Bandwidth (computing)Computer networkImbalanced Data Classification TechniquesAnomaly Detection Techniques and ApplicationsElectricity Theft Detection Techniques