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How to measure hallucination
INSIDE: LLMS’ INTERNAL STATES RETAIN THE POWER OF HALLUCINATION DETECTION
A Mathematical Investigation of Hallucination and Creativity in GPT Models
Measuring and Reducing LLM Hallucination without Gold-Standard Answers via Expertise-Weighting
KCTS: Knowledge-Constrained Tree Search Decoding with
Token-Level Hallucination Detection
AutoHall: Automated Hallucination Dataset Generation for Large Language Models
HaluEval: A Large-Scale Hallucination Evaluation Benchmar for Large Language Models
Semantic Consistency for Assuring Reliability of Large Language Models