Activated Parameter Locating via Causal Intervention for Model Merging
Model merging combines multiple homologous models into one model, achieving convincing generalization without the necessity of additional training. A key challenge in this problem is resolving parameter redundancies and conflicts across multiple models. Existing models have demonstrated that droppin...
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Zusammenfassung: | Model merging combines multiple homologous models into one model, achieving
convincing generalization without the necessity of additional training. A key
challenge in this problem is resolving parameter redundancies and conflicts
across multiple models. Existing models have demonstrated that dropping a
portion of delta parameters can alleviate conflicts while maintaining
performance. However, these methods often drop parameters either randomly or
based on magnitude, overlooking task-specific information embedded in
fine-tuned models. In this paper, we propose an Activated Parameter Locating
(APL) method that utilizes causal intervention to estimate parameter
importance, enabling more precise parameter drops and better conflict
mitigation. Moreover, to reduce the computational complexity associated with a
large number of parameter partitions, we also introduce a theoretically
supported gradient approximation strategy for APL. Experiments on model merging
within both in-domain and out-of-domain settings, along with associated
analyses, showcase the effectiveness of APL. |
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DOI: | 10.48550/arxiv.2408.09485 |