AI RESEARCH

LLM Unlearning with LLM Beliefs

arXiv CS.LG

ArXi:2510.19422v2 Announce Type: replace Large language models trained on vast corpora inherently risk memorizing sensitive or harmful content, which may later resurface in their outputs. Prevailing unlearning methods generally rely on gradient ascent and its variants to lower the probability of specific target responses. However, we find that this strategy induces a critical side effect: probability mass is redistributed into high-likelihood regions, often corresponding to semantically related rephrasings of the targets.