German also Hallucinates! Inconsistency Detection in News Summaries with the Absinth Dataset

ArXiv Pub Date : 2024-03-06 DOI:10.3929/ethz-b-000661775
Laura Mascarell, Ribin Chalumattu, Annette Rios
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Abstract

The advent of Large Language Models (LLMs) has led to remarkable progress on a wide range of natural language processing tasks. Despite the advances, these large-sized models still suffer from hallucinating information in their output, which poses a major issue in automatic text summarization, as we must guarantee that the generated summary is consistent with the content of the source document. Previous research addresses the challenging task of detecting hallucinations in the output (i.e. inconsistency detection) in order to evaluate the faithfulness of the generated summaries. However, these works primarily focus on English and recent multilingual approaches lack German data. This work presents absinth, a manually annotated dataset for hallucination detection in German news summarization and explores the capabilities of novel open-source LLMs on this task in both fine-tuning and in-context learning settings. We open-source and release the absinth dataset to foster further research on hallucination detection in German.
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德国人也会产生幻觉!利用 Absinth 数据集检测新闻摘要中的不一致性
大型语言模型(LLMs)的出现,使各种自然语言处理任务取得了显著进展。尽管取得了这些进步,但这些大型模型的输出中仍然会出现幻觉信息,这给自动文本摘要化带来了重大问题,因为我们必须保证生成的摘要与源文件的内容一致。以往的研究解决了检测输出中的幻觉(即不一致性检测)这一具有挑战性的任务,以评估生成摘要的忠实性。不过,这些研究主要集中在英语领域,而最近的多语言方法缺乏德语数据。本作品介绍了用于德语新闻摘要中幻觉检测的人工标注数据集 absinth,并探索了新型开源 LLM 在微调和上下文学习环境下完成该任务的能力。我们开源并发布了苦艾酒数据集,以促进对德语幻觉检测的进一步研究。
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