English

Towards Adaptive Continual Model Merging via Manifold-Aware Expert Evolution

Machine Learning 2026-04-27 v1

Abstract

Continual Model Merging (CMM) sequentially integrates task-specific models into a unified architecture without intensive retraining. However, existing CMM methods are hindered by a fundamental saturation-redundancy dilemma: backbone-centric approaches face parameter saturation and representation interference within fixed capacities, whereas Mixture-of-Experts (MoE) variants resort to indiscriminate expansion, incurring expert redundancy and a routing bottleneck reliant on additional data-driven optimization. To resolve these challenges, we propose MADE-IT (Manifold-Aware Dynamic Expert Evolution and Implicit rouTing), an adaptive CMM method that orchestrates expert management and activation by grounding intrinsic expert representations in manifold geometry. We introduce a projection-based subspace affinity metric coupled with a distribution-aware adaptive threshold mechanism to guide autonomous expert evolution, harmonizing diversity with architectural parsimony. Furthermore, to bypass parameterized gating networks, we design a data-free and training-free implicit routing mechanism that activates experts via feature-subspace alignment. Extensive experiments demonstrate that MADE-IT consistently outperforms strong baselines in accuracy and robustness across long-horizon and shuffled task sequences, while significantly pruning redundant experts, particularly within generic modules and early layers.

Keywords

Cite

@article{arxiv.2604.22464,
  title  = {Towards Adaptive Continual Model Merging via Manifold-Aware Expert Evolution},
  author = {Haiyun Qiu and Xingyu Wu and Kay Chen Tan},
  journal= {arXiv preprint arXiv:2604.22464},
  year   = {2026}
}
R2 v1 2026-07-01T12:33:42.816Z