AI RESEARCH
Quantifying Genuine Awareness in Hallucination Prediction Beyond Question-Side Shortcuts
arXiv CS.CL
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ArXi:2509.15339v2 Announce Type: replace Many works have proposed methodologies for language model (LM) hallucination detection and reported seemingly strong performance. However, we argue that the reported performance to date reflects not only a model's genuine awareness of its internal information, but also awareness derived purely from question-side information (e.g., benchmark hacking). While benchmark hacking can be effective for boosting hallucination detection score on existing benchmarks, it does not generalize to out-of-domain settings and practical usage.