AI RESEARCH
Distilling Linearized Behavior for Effective Task Arithmetic
arXiv CS.AI
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ArXi:2605.18993v1 Announce Type: cross Task vector composition has emerged as a promising paradigm for editing pre-trained models, enabling model merging through addition and unlearning through subtraction. Fine-tuning in the tangent space of a pre-trained model (linear fine-tuning) has proven effective, as it produces task vectors that are naturally disentangled and resistant to interference. However, linearized models suffer from limited expressivity during