arXiv:2605.30448v1 Announce Type: new Abstract: Black-box LLM distillation is usually evaluated as an output-matching problem: a student is considered successful when its responses are semantically similar to, or task-consistent with, those of a teacher. However, output similarity does not imply that the student is behaviorally indistinguishable from the model it imitates. We introduce bounded behavioral indistinguishability, formalized as $(\epsilon,q,t,\mathbb{A})$-behavioral indistinguishability over an explicit prompt distribution, where $\epsilon$ bounds distinguishing advantage, $q$ boun
Source: arXiv cs.LG — read the full report at the original publisher.
