Claim detection for automated fact-checking: A survey on monolingual, multilingual and cross-lingual research

Rrubaa Panchendrarajan, Arkaitz Zubiaga
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Abstract

Automated fact-checking has drawn considerable attention over the past few decades due to the increase in the diffusion of misinformation on online platforms. This is often carried out as a sequence of tasks comprising (i) the detection of sentences circulating in online platforms which constitute claims needing verification, followed by (ii) the verification process of those claims. This survey focuses on the former, by discussing existing efforts towards detecting claims needing fact-checking, with a particular focus on multilingual data and methods. This is a challenging and fertile direction where existing methods are yet far from matching human performance due to the profoundly challenging nature of the issue. Especially, the dissemination of information across multiple social platforms, articulated in multiple languages and modalities demands more generalized solutions for combating misinformation. Focusing on multilingual misinformation, we present a comprehensive survey of existing multilingual claim detection research. We present state-of-the-art multilingual claim detection research categorized into three key factors of the problem, verifiability, priority, and similarity. Further, we present a detailed overview of the existing multilingual datasets along with the challenges and suggest possible future advancements.

自动事实核查的索赔检测:单语言、多语言和跨语言研究调查
过去几十年来,由于网络平台上错误信息传播的增加,自动事实核查引起了广泛关注。这通常是以一系列任务的形式进行的,其中包括:(i) 检测网络平台上流传的构成需要验证的说法的句子,然后是(ii) 对这些说法进行验证的过程。本调查报告侧重于前者,讨论了在检测需要事实核查的声明方面的现有工作,尤其侧重于多语言数据和方法。这是一个充满挑战和机遇的方向,由于这一问题具有极高的挑战性,现有的方法还远远无法与人类的表现相匹配。特别是,信息在多个社交平台上以多种语言和方式传播,这就要求采用更通用的解决方案来打击误导信息。我们以多语言虚假信息为重点,对现有的多语言声明检测研究进行了全面调查。我们按照问题的三个关键因素,即可验证性、优先性和相似性,介绍了最先进的多语言声明检测研究。此外,我们还详细介绍了现有的多语言数据集以及面临的挑战,并提出了未来可能取得的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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