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Will it Merge? On The Causes of Model Mergeability

Adir Rahamim
Asaf Yehudai
Boaz Carmeli
Leshem Choshen
Yosi Mass
Yonatan Belinkov
Main:8 Pages
46 Figures
Bibliography:2 Pages
4 Tables
Appendix:10 Pages
Abstract

Model merging has emerged as a promising technique for combining multiple fine-tuned models into a single multitask model without retraining. However, the factors that determine whether merging will succeed or fail remain poorly understood. In this work, we investigate why specific models are merged better than others. To do so, we propose a concrete, measurable definition of mergeability. We investigate several potential causes for high or low mergeability, highlighting the base model knowledge as a dominant factor: Models fine-tuned on instances that the base model knows better are more mergeable than models fine-tuned on instances that the base model struggles with. Based on our mergeability definition, we explore a simple weighted merging technique that better preserves weak knowledge in the base model.

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