Anti Forgetting
"Anti-forgetting" in machine learning focuses on mitigating the tendency of models, particularly deep neural networks and large language models, to lose previously learned information when acquiring new knowledge. Current research emphasizes techniques like experience replay, regularization methods, and novel optimization algorithms (e.g., momentum-filtered optimizers) to improve knowledge retention across various tasks and datasets, often within continual learning or machine unlearning frameworks. This field is crucial for developing more robust and adaptable AI systems, impacting areas like robotics, personalized medicine, and natural language processing by enabling lifelong learning and efficient knowledge management.
Papers
CURE4Rec: A Benchmark for Recommendation Unlearning with Deeper Influence
Chaochao Chen, Jiaming Zhang, Yizhao Zhang, Li Zhang, Lingjuan Lyu, Yuyuan Li, Biao Gong, Chenggang Yan
May the Forgetting Be with You: Alternate Replay for Learning with Noisy Labels
Monica Millunzi, Lorenzo Bonicelli, Angelo Porrello, Jacopo Credi, Petter N. Kolm, Simone Calderara