Abstract

Imbalanced data classification presents a significant challenge when there is a substantial disparity in sample sizes across different classes. This issue severely affects classifier accuracy in predicting minority classes, hampering numerous real-world applications. Traditional methods address data imbalance by using undersampling or oversampling techniques. However, these methods may lead to information loss during sample reduction or introduce noise and model bias through synthetic sample generation. In this paper, we introduce DRIL, an innovative clustering-based incremental learning approach designed to overcome these limitations and improve the classification of minority class samples. Specifically, we employ a “two-step clustering” method to rebalance the dataset, partitioning it into similar and representative sub-dataset. Subsequently, incremental learning is applied to enable the classifier to gradually acquire knowledge about these sub-data, establishing a comprehensive understanding of all features present in the imbalanced dataset. Experimental results on twenty datasets demonstrate that our incremental learning-based algorithm outperforms baseline methods in correctly classifying minority classes while exhibiting improved precision and F1 score performance.

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