Section 01
Introduction: EPI Dynamic Parameter Isolation Framework Solves Catastrophic Forgetting in Large Model Fine-Tuning
This article proposes the Evolving Parameter Isolation (EPI) framework, which addresses task interference and catastrophic forgetting in supervised fine-tuning by dynamically updating parameter isolation masks. Based on the key finding that parameter importance drifts over the training process, this framework breaks through the limitations of static parameter isolation methods and achieves a balance between knowledge retention and new knowledge learning.