AIBullisharXiv – CS AI · 7h ago7/10
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RAFT: Data Refinement and Adaptive Distillation for Domain Fine-Tuning with Alleviated Forgetting
Researchers introduce RAFT, a framework addressing the problem of catastrophic forgetting in domain-specific fine-tuning of language models. By combining data refinement with answer-conditioned distillation, RAFT achieves 23.2% improvement in domain accuracy while recovering 10-18% of general capability losses typically incurred during fine-tuning.