An Oversampling Method for Class Imbalance Problems on Large Datasets
Fredy Rodríguez-Torres, José Fco. Martínez-Trinidad, Jesús Ariel Carrasco-Ochoa
Abstract
Several oversampling methods have been proposed for solving the class imbalance problem. However, most of them require searching the k-nearest neighbors to generate synthetic objects. This requirement makes them time-consuming and therefore unsuitable for large datasets. In this paper, an oversampling method for large class imbalance problems that do not require the k-nearest neighbors’ search is proposed. According to our experiments on large datasets with different sizes of imbalance, the proposed method is at least twice as fast as 8 the fastest method reported in the literature while obtaining similar oversampling quality.
Topics & Concepts
OversamplingClass (philosophy)Computer scienceData miningQuality (philosophy)Artificial intelligencePattern recognition (psychology)AlgorithmPhysicsBandwidth (computing)Computer networkQuantum mechanicsImbalanced Data Classification TechniquesAnomaly Detection Techniques and ApplicationsElectricity Theft Detection Techniques