arXiv (Cornell University)
A Hybrid Approach for Binary Classification of Imbalanced Data
July 2022 • Hsinhan Tsai, Ta-Wei Yang, Wai-Man Wong, Cheng‐Fu Chou
Binary classification with an imbalanced dataset is challenging. Models tend to consider all samples as belonging to the majority class. Although existing solutions such as sampling methods, cost-sensitive methods, and ensemble learning methods improve the poor accuracy of the minority class, these methods are limited by overfitting problems or cost parameters that are difficult to decide. We propose HADR, a hybrid approach with dimension reduction that consists of data block construction, dimentionality reduction…