论文标题

虚假新闻检测的事件相关过滤方法

An Event Correlation Filtering Method for Fake News Detection

论文作者

Li, Hao, Wang, Huan, Liu, Guanghua

论文摘要

如今,社交网络平台一直是人们经历新闻和事件的主要来源,因为他们的能力迅速传播信息,这不可避免地为传播假新闻提供了沃土。因此,要检测到假新闻是很重要的,否则可能会引起公众的误导和恐慌。现有的深度学习模型取得了巨大的进步,以解决假新闻检测的问题。但是,培训有效的深度学习模型通常需要大量标记的新闻,而在实际应用中提供足够的标记新闻是昂贵且耗时的。为了提高虚假新闻的检测性能,我们利用了新闻的事件相关性,并提出了一种用于假新闻检测的事件相关过滤方法(ECFM),主要包括新闻特征器,伪标签注释者,事件信誉更新者和新闻熵选择器。新闻特征负责从新闻中提取文本功能,该功能与伪标签注释器合作,通过充分利用新闻的事件相关性来为未标记的新闻分配伪标签。此外,事件可信度更新者采用自适应卡尔曼过滤器来削弱事件的信誉波动。为了进一步提高检测性能,新闻熵选择器通过量化其新闻熵从伪标记的新闻中自动发现高质量样本。最后,提议将ECFM整合为以事件相关过滤方式检测假新闻。广泛的实验证明,新闻事件相关性的可解释引入对提高虚假新闻的检测性能是有益的。

Nowadays, social network platforms have been the prime source for people to experience news and events due to their capacities to spread information rapidly, which inevitably provides a fertile ground for the dissemination of fake news. Thus, it is significant to detect fake news otherwise it could cause public misleading and panic. Existing deep learning models have achieved great progress to tackle the problem of fake news detection. However, training an effective deep learning model usually requires a large amount of labeled news, while it is expensive and time-consuming to provide sufficient labeled news in actual applications. To improve the detection performance of fake news, we take advantage of the event correlations of news and propose an event correlation filtering method (ECFM) for fake news detection, mainly consisting of the news characterizer, the pseudo label annotator, the event credibility updater, and the news entropy selector. The news characterizer is responsible for extracting textual features from news, which cooperates with the pseudo label annotator to assign pseudo labels for unlabeled news by fully exploiting the event correlations of news. In addition, the event credibility updater employs adaptive Kalman filter to weaken the credibility fluctuations of events. To further improve the detection performance, the news entropy selector automatically discovers high-quality samples from pseudo labeled news by quantifying their news entropy. Finally, ECFM is proposed to integrate them to detect fake news in an event correlation filtering manner. Extensive experiments prove that the explainable introduction of the event correlations of news is beneficial to improve the detection performance of fake news.

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