A Survey on Automatic Credibility Assessment of Textual Credibility Signals in the Era of Large Language Models
In the current era of social media and generative AI, an ability to automatically assess the credibility of online social media content is of tremendous importance. Credibility assessment is fundamentally based on aggregating credibility signals, which refer to small units of information, such as co...
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Zusammenfassung: | In the current era of social media and generative AI, an ability to
automatically assess the credibility of online social media content is of
tremendous importance. Credibility assessment is fundamentally based on
aggregating credibility signals, which refer to small units of information,
such as content factuality, bias, or a presence of persuasion techniques, into
an overall credibility score. Credibility signals provide a more granular, more
easily explainable and widely utilizable information in contrast to currently
predominant fake news detection, which utilizes various (mostly latent)
features. A growing body of research on automatic credibility assessment and
detection of credibility signals can be characterized as highly fragmented and
lacking mutual interconnections. This issue is even more prominent due to a
lack of an up-to-date overview of research works on automatic credibility
assessment. In this survey, we provide such systematic and comprehensive
literature review of 175 research papers while focusing on textual credibility
signals and Natural Language Processing (NLP), which undergoes a significant
advancement due to Large Language Models (LLMs). While positioning the NLP
research into the context of other multidisciplinary research works, we tackle
with approaches for credibility assessment as well as with 9 categories of
credibility signals (we provide a thorough analysis for 3 of them, namely: 1)
factuality, subjectivity and bias, 2) persuasion techniques and logical
fallacies, and 3) claims and veracity). Following the description of the
existing methods, datasets and tools, we identify future challenges and
opportunities, while paying a specific attention to recent rapid development of
generative AI. |
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DOI: | 10.48550/arxiv.2410.21360 |