Class Imbalance
Class imbalance, the uneven distribution of classes in a dataset, hinders the performance of machine learning models by biasing them towards the majority class. Current research focuses on mitigating this imbalance through various techniques, including data resampling (oversampling minority classes, undersampling majority classes), cost-sensitive learning (assigning different misclassification costs), and algorithmic modifications (e.g., adapting loss functions, employing novel regularization methods within models like GBDTs, and using contrastive learning). Addressing class imbalance is crucial for improving the fairness, robustness, and accuracy of machine learning models across diverse applications, from medical diagnosis and financial risk assessment to environmental monitoring and traffic sign recognition.
Papers
Prototype-based Heterogeneous Federated Learning for Blade Icing Detection in Wind Turbines with Class Imbalanced Data
Lele Qi, Mengna Liu, Xu Cheng, Fan Shi, Xiufeng Liu, Shengyong ChenTianjin University of Technology●Technical University of DenmarkA Theoretical Framework for Preventing Class Collapse in Supervised Contrastive Learning
Chungpa Lee, Jeongheon Oh, Kibok Lee, Jy-yong SohnYonsei University●Bank of KoreaInjecting Imbalance Sensitivity for Multi-Task Learning
Zhipeng Zhou, Liu Liu, Peilin Zhao, Wei GongUniversity of Science and Technology of China●Tencent AI Lab
Are all models wrong? Fundamental limits in distribution-free empirical model falsification
Manuel M. Müller, Yuetian Luo, Rina Foygel BarberAn Automated Machine Learning Framework for Surgical Suturing Action Detection under Class Imbalance
Baobing Zhang, Paul Sullivan, Benjie Tang, Ghulam Nabi, Mustafa Suphi Erden