AI RESEARCH
IUQ: Interrogative Uncertainty Quantification for Long-Form Large Language Model Generation
arXiv CS.AI
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ArXi:2604.15109v1 Announce Type: cross Despite the rapid advancement of Large Language Models (LLMs), uncertainty quantification in LLM generation is a persistent challenge. Although recent approaches have achieved strong performance by restricting LLMs to produce short or constrained answer sets, many real-world applications require long-form and free-form text generation. A key difficulty in this setting is that LLMs often produce responses that are semantically coherent yet factually inaccurate, while the underlying semantics are multifaceted and the linguistic structure is complex.