Class Incremental Learning
Class incremental learning (CIL) focuses on training machine learning models to continuously learn new classes of data without forgetting previously learned ones, a crucial challenge for real-world applications with evolving data streams. Current research emphasizes techniques like dynamic model architectures (e.g., adding task-specific adapters), generative replay methods to synthesize past data, and the use of pre-trained models to leverage existing knowledge. These advancements aim to improve accuracy and fairness while addressing issues like catastrophic forgetting and data imbalance, impacting fields such as medical image analysis, sound source localization, and personalized AI systems.
Papers
First Session Adaptation: A Strong Replay-Free Baseline for Class-Incremental Learning
Aristeidis Panos, Yuriko Kobe, Daniel Olmeda Reino, Rahaf Aljundi, Richard E. Turner
Adaptive Regularization for Class-Incremental Learning
Elif Ceren Gok Yildirim, Murat Onur Yildirim, Mert Kilickaya, Joaquin Vanschoren
DualMix: Unleashing the Potential of Data Augmentation for Online Class-Incremental Learning
Yunfeng Fan, Wenchao Xu, Haozhao Wang, Jiaqi Zhu, Junxiao Wang, Song Guo
ICICLE: Interpretable Class Incremental Continual Learning
Dawid Rymarczyk, Joost van de Weijer, Bartosz Zieliński, Bartłomiej Twardowski