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LLM Internal States Reveal Hallucination Risk Faced With a Query

Ziwei Ji, Delong Chen, Etsuko Ishii, Samuel Cahyawijaya, Yejin Bang, Bryan Wilie, Pascale Fung

202416 citationsDOIOpen Access PDF

Abstract

The hallucination problem of Large Language Models (LLMs) significantly limits their reliability and trustworthiness.Humans have a selfawareness process that allows us to recognize what we don't know when faced with queries.Inspired by this, our paper investigates whether LLMs can estimate their own hallucination risk before response generation.We analyze the internal mechanisms of LLMs broadly both in terms of training data sources and across 15 diverse Natural Language Generation (NLG) tasks, spanning over 700 datasets.Our empirical analysis reveals two key insights: (1) LLM internal states indicate whether they have seen the query in training data or not; and (2) LLM internal states show they are likely to hallucinate or not regarding the query.Our study explores particular neurons, activation layers, and tokens that play a crucial role in the LLM perception of uncertainty and hallucination risk.By a probing estimator, we leverage LLM selfassessment, achieving an average hallucination estimation accuracy of 84.32% at run time. 1

Topics & Concepts

Computer scienceHallucinations in medical conditions