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Main Authors: Xu, Junhao, Xian, Longdi, Liu, Zening, Chen, Mingliang, Yin, Qiuyang, Song, Fenghua
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.20204
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_version_ 1866913579518656512
author Xu, Junhao
Xian, Longdi
Liu, Zening
Chen, Mingliang
Yin, Qiuyang
Song, Fenghua
author_facet Xu, Junhao
Xian, Longdi
Liu, Zening
Chen, Mingliang
Yin, Qiuyang
Song, Fenghua
contents Artificial Intelligence Generated Content (AIGC) technology development has facilitated the creation of rumors with misinformation, impacting societal, economic, and political ecosystems, challenging democracy. Current rumor detection efforts fall short by merely labeling potentially misinformation (classification task), inadequately addressing the issue, and it is unrealistic to have authoritative institutions debunk every piece of information on social media. Our proposed comprehensive debunking process not only detects rumors but also provides explanatory generated content to refute the authenticity of the information. The Expert-Citizen Collective Wisdom (ECCW) module we designed aensures high-precision assessment of the credibility of information and the retrieval module is responsible for retrieving relevant knowledge from a Real-time updated debunking database based on information keywords. By using prompt engineering techniques, we feed results and knowledge into a LLM (Large Language Model), achieving satisfactory discrimination and explanatory effects while eliminating the need for fine-tuning, saving computational costs, and contributing to debunking efforts.
format Preprint
id arxiv_https___arxiv_org_abs_2403_20204
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Future of Combating Rumors? Retrieval, Discrimination, and Generation
Xu, Junhao
Xian, Longdi
Liu, Zening
Chen, Mingliang
Yin, Qiuyang
Song, Fenghua
Artificial Intelligence
68T99
Artificial Intelligence Generated Content (AIGC) technology development has facilitated the creation of rumors with misinformation, impacting societal, economic, and political ecosystems, challenging democracy. Current rumor detection efforts fall short by merely labeling potentially misinformation (classification task), inadequately addressing the issue, and it is unrealistic to have authoritative institutions debunk every piece of information on social media. Our proposed comprehensive debunking process not only detects rumors but also provides explanatory generated content to refute the authenticity of the information. The Expert-Citizen Collective Wisdom (ECCW) module we designed aensures high-precision assessment of the credibility of information and the retrieval module is responsible for retrieving relevant knowledge from a Real-time updated debunking database based on information keywords. By using prompt engineering techniques, we feed results and knowledge into a LLM (Large Language Model), achieving satisfactory discrimination and explanatory effects while eliminating the need for fine-tuning, saving computational costs, and contributing to debunking efforts.
title The Future of Combating Rumors? Retrieval, Discrimination, and Generation
topic Artificial Intelligence
68T99
url https://arxiv.org/abs/2403.20204