Atomheart-Father/LoRA-SFT-vs-LoRA-DPO-A-Comparative-Study-of-Small-Factual-Updates-in-LLMs
This paper studies small factual updates: updates that preserve the subject and relation but replace a single object value (typically a numeric or date value) with a new one. We compare two parameter-efficient post-training approaches for such updates: LoRA- SFT versus LoRA-DPO.
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