Section 01
MAny Framework: A New Solution to the Dual Forgetting Problem in Multimodal Continual Learning
The research team proposes the MAny (Merge Anything) framework, which specifically addresses the dual forgetting problem (perceptual drift and reasoning collapse) in multimodal large models during continual learning through two core mechanisms: Cross-Modal Projection Fusion (CPM) and Low-Rank Parameter Fusion (LPM). This framework requires no additional training and completes knowledge fusion solely via efficient CPU algebraic operations. It achieves a maximum accuracy improvement of 8.57% over existing SOTA methods on the UCIT benchmark, providing a practical and efficient solution for multimodal continual learning.