While Large language models (LLMs) have garnered widespread applications across various domains due to their powerful language understanding and generation capabilities, the detection of non-factual or hallucinatory content generated by LLMs remains scarce. Currently, one significant challenge in hallucination detection is the laborious task of time-consuming and expensive manual annotation of the hallucinatory generation. To address this issue, this paper first introduces a method for automatically constructing model-specific hallucination datasets based on existing fact-checking datasets called AutoHall. Furthermore, we propose a zero-resource and black-box hallucination detection method based on self-contradiction. We conduct experiments towards prevalent open-/closed-source LLMs, achieving superior hallucination detection performance compared to extant baselines. Moreover, our experiments reveal variations in hallucination proportions and types among different models.
AutoHall: Automated Hallucination Dataset Generation for Large Language Models
A method named AutoHall for constructing model-specific hallucination datasets and a zero-resource self-contradiction-based hallucination detection method outperform existing baselines across various language models.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 3
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- arxiv.org/abs/2310.00259v2ARXIV-DEFAULT
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