AI RESEARCH

Mitigating Forgetting in Continual Learning with Selective Gradient Projection

arXiv CS.LG

ArXi:2603.26671v1 Announce Type: new As neural networks are increasingly deployed in dynamic environments, they face the challenge of catastrophic forgetting, the tendency to overwrite previously learned knowledge when adapting to new tasks, resulting in severe performance degradation on earlier tasks. We propose Selective Forgetting-Aware Optimization (SFAO), a dynamic method that regulates gradient directions via cosine similarity and per-layer gating, enabling controlled forgetting while balancing plasticity and stability.