English

Weight Weaving: Parameter Pooling for Data-Free Model Merging

Machine Learning 2025-10-17 v1 Computer Vision and Pattern Recognition

Abstract

Model merging provides a cost-effective and data-efficient combination of specialized deep neural networks through parameter integration. This technique leverages expert models across downstream tasks without requiring retraining. Most model merging approaches critically depend on scaling hyper-parameters λ\lambda, which weight each model's contribution globally or individually. Principled approaches for setting scaling factors without accessing any data (data-free) are scarce, often leading researchers to tune λ\lambda using privileged data from the evaluation set, which is obviously unfeasible in practice. To address this limitation, we introduce Weight Weaving, a plug-and-play technique that pools model weights across λ\lambda values search space using user-defined pooling functions, such as averaging, random selection, or even existing model merging methods. Our method demonstrates high modularity, imposing minimal constraints on the search space. It operates orthogonally to existing model merging methods and eliminates evaluation data requirements. We validate Weight Weaving across three ViT variants in three experimental setups: vision multi-task learning, vision continual learning, and domain generalization. Our method consistently improves the performance of several model merging methods, achieving average accuracy gains of up to 15.9 percentage points in a data-free setting.

Keywords

Cite

@article{arxiv.2510.13921,
  title  = {Weight Weaving: Parameter Pooling for Data-Free Model Merging},
  author = {Levy Chaves and Eduardo Valle and Sandra Avila},
  journal= {arXiv preprint arXiv:2510.13921},
  year   = {2025}
}

Comments

17 pages, 3 figures. Accepted at the 3rd UniReps Workshop @ NeurIPS 2025

R2 v1 2026-07-01T06:39:41.984Z