Residual SODAP: Residual Self-Organizing Domain-Adaptive Prompting with Structural Knowledge Preservation for Continual Learning
Researchers propose Residual SODAP, a new continual learning framework that addresses catastrophic forgetting in AI models when adapting to new domains without access to previous data. The method combines prompt-based adaptation with classifier knowledge preservation, achieving state-of-the-art results on three benchmarks.