论文标题

通过基于弱监督学习的新闻,出版商和用户的信誉,通过利用新闻,出版商和用户的信誉来及早发现假新闻

Early Detection of Fake News by Utilizing the Credibility of News, Publishers, and Users Based on Weakly Supervised Learning

论文作者

Yuan, Chunyuan, Ma, Qianwen, Zhou, Wei, Han, Jizhong, Hu, Songlin

论文摘要

虚假新闻的传播极大地影响了个人声誉和公众信任。最近,假新闻检测引起了极大的关注,先前的研究主要集中于从新闻内容或扩散路径中找到线索。但是,在早期检测方案中通常不可用或不足,导致性能差。因此,早期的假新闻检测仍然是一个艰巨的挑战。从直觉上讲,来自受信任和权威的来源的新闻或许多具有良好声誉的用户共享的消息比其他新闻更可靠。使用出版商​​和用户作为事先弱监督信息的信誉,我们可以在大规模新闻中快速找到假新闻,并在传播的早期阶段检测到它们。 在本文中,我们提出了一个新颖的结构吸引的多头注意网络(SMAN),该网络结合了新闻内容,发布和重新发布出版商和用户的关系,以共同优化虚假的新闻检测和信誉预测任务。通过这种方式,我们可以明确利用发布者和用户的信誉来提早伪造新闻检测。我们对三个现实世界数据集进行了实验,结果表明,SMAN可以在4小时内以超过91%的精度检测假新闻,这比最先进的模型快得多。

The dissemination of fake news significantly affects personal reputation and public trust. Recently, fake news detection has attracted tremendous attention, and previous studies mainly focused on finding clues from news content or diffusion path. However, the required features of previous models are often unavailable or insufficient in early detection scenarios, resulting in poor performance. Thus, early fake news detection remains a tough challenge. Intuitively, the news from trusted and authoritative sources or shared by many users with a good reputation is more reliable than other news. Using the credibility of publishers and users as prior weakly supervised information, we can quickly locate fake news in massive news and detect them in the early stages of dissemination. In this paper, we propose a novel Structure-aware Multi-head Attention Network (SMAN), which combines the news content, publishing, and reposting relations of publishers and users, to jointly optimize the fake news detection and credibility prediction tasks. In this way, we can explicitly exploit the credibility of publishers and users for early fake news detection. We conducted experiments on three real-world datasets, and the results show that SMAN can detect fake news in 4 hours with an accuracy of over 91%, which is much faster than the state-of-the-art models.

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