AI RESEARCH
Conditional Factuality Controlled LLMs with Generalization Certificates via Conformal Sampling
arXiv CS.AI
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ArXi:2603.27403v1 Announce Type: cross Large language models (LLMs) need reliable test-time control of hallucinations. Existing conformal methods for LLMs typically provide only \emph{marginal} guarantees and rely on a single global threshold, which can under-cover hard prompts, over-cover easy ones, and produce oversized prediction sets. We propose \emph{Conditional Factuality Control} (CFC), a post-hoc conformal framework that returns \emph{set-valued} outputs with \emph{conditional} coverage guarantees.