CLApr 26, 2025

Dynamic Fisher-weighted Model Merging via Bayesian Optimization

arXiv:2504.18992v120 citationsh-index: 12NAACL
Originality Incremental advance
AI Analysis

This addresses the efficiency gap in creating multi-task models without joint training, though it is incremental as it builds on existing merging approaches.

The paper tackles the problem of merging fine-tuned language models into multi-task models by introducing Dynamic Fisher-weighted Merging (DF-Merge), which unifies scaling and parameter importance strategies and uses Bayesian optimization to adjust coefficients, resulting in outperformance over strong baselines across various models and tasks.

The fine-tuning of pre-trained language models has resulted in the widespread availability of task-specific models. Model merging offers an efficient way to create multi-task models by combining these fine-tuned models at the parameter level, without the need for training data or joint training on multiple datasets. Existing merging approaches typically involve scaling the parameters model-wise or integrating parameter importance parameter-wise. Both approaches exhibit their own weaknesses, leading to a notable performance gap compared to multi-task fine-tuning. In this paper, we unify these seemingly distinct strategies into a more general merging framework, and introduce Dynamic Fisher-weighted Merging (DF-Merge). Specifically, candidate models are associated with a set of coefficients that linearly scale their fine-tuned parameters. Bayesian optimization is applied to dynamically adjust these coefficients, aiming to maximize overall performance on validation sets. Each iteration of this process integrates parameter importance based on the Fisher information conditioned by the coefficients. Experimental results show that DF-Merge outperforms strong baselines across models of different sizes and a variety of tasks. Our analysis shows that the effectiveness of DF-Merge arises from the unified view of merging and that near-optimal performance is achievable in a few iterations, even with minimal validation data.

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