LGCVFeb 3

Scaling Continual Learning with Bi-Level Routing Mixture-of-Experts

arXiv:2602.03473v11 citationsh-index: 6Has Code
AI Analysis

This addresses the challenge of maintaining stability and plasticity in continual learning for AI systems handling many tasks, representing a significant advance rather than an incremental improvement.

The paper tackles the problem of continual learning over very long task sequences by proposing CaRE, a scalable continual learner with a bi-level routing mixture-of-experts mechanism, which achieves leading performance and scales to over 300 tasks, outperforming baselines by a large margin.

Continual learning, especially class-incremental learning (CIL), on the basis of a pre-trained model (PTM) has garnered substantial research interest in recent years. However, how to effectively learn both discriminative and comprehensive feature representations while maintaining stability and plasticity over very long task sequences remains an open problem. We propose CaRE, a scalable {C}ontinual Le{a}rner with efficient Bi-Level {R}outing Mixture-of-{E}xperts (BR-MoE). The core idea of BR-MoE is a bi-level routing mechanism: a router selection stage that dynamically activates relevant task-specific routers, followed by an expert routing phase that dynamically activates and aggregates experts, aiming to inject discriminative and comprehensive representations into every intermediate network layer. On the other hand, we introduce a challenging evaluation protocol for comprehensively assessing CIL methods across very long task sequences spanning hundreds of tasks. Extensive experiments show that CaRE demonstrates leading performance across a variety of datasets and task settings, including commonly used CIL datasets with classical CIL settings (e.g., 5-20 tasks). To the best of our knowledge, CaRE is the first continual learner that scales to very long task sequences (ranging from 100 to over 300 non-overlapping tasks), while outperforming all baselines by a large margin on such task sequences. Code will be publicly released at https://github.com/LMMMEng/CaRE.git.

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