Disrupting Model Merging: A Parameter-Level Defense Without Sacrificing Accuracy
Journal:
arXiv
Published Date:
Mar 8, 2025
Abstract
Model merging is a technique that combines multiple finetuned models into a
single model without additional training, allowing a free-rider to cheaply
inherit specialized capabilities. This study investigates methodologies to
suppress unwanted model merging by free-riders. Existing methods such as model
watermarking or fingerprinting can only detect merging in hindsight. In
contrast, we propose a first proactive defense against model merging.
Specifically, our defense method modifies the model parameters so that the
model is disrupted if the model is merged with any other model, while its
functionality is kept unchanged if not merged with others. Our approach
consists of two modules, rearranging MLP parameters and scaling attention
heads, which push the model out of the shared basin in parameter space, causing
the merging performance with other models to degrade significantly. We conduct
extensive experiments on image classification, image generation, and text
classification to demonstrate that our defense severely disrupts merging while
retaining the functionality of the post-protect model. Moreover, we analyze
potential adaptive attacks and further propose a dropout-based pruning to
improve our proposal's robustness.