Non-Forgetting Knowledge Allocation with Bi-level Competition for Class-Incremental Learning 文章

ArXiv CS.CV2026-05-29NEWSen作者: Xiang Tan, Run He, Yawen Cui, Mengchen Zhao, Yan Wu, Tianyi Chen, Huiping Zhuang, Xiaonan Luo, Guanbin Li

摘要

arXiv:2605.29592v1 Announce Type: new Abstract: Class-Incremental Learning (CIL) with pre-trained models (PTMs) aims to sequentially adapt PTMs to new categories without forgetting old knowledge. Built upon PTMs, existing adapter-based methods mainly train models via distinct task-specific adapters, and present a uniform knowledge allocation for each adapter during inference. However, this allocation mechanism ignores the nature of task discrepancy and leads to suboptimal utilization of adapters. Also, under CIL constraint, an allocator is prone to forgetting when tasks evolve. To address these issues, we propose a Non-Forgetting Allocation with Bi-Level Competition (NoFA-BC). NoFA-BC constructs a non-forgetting allocator (NFA) by transforming the allocator training into a recursive least-squares problem and achieves an allocator equivalent to that trained with all data.