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FNED: A Deep Network for Fake News Early Detection on Social Media

机译:FNED:一个深度网络,用于假新闻早期检测社交媒体

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摘要

The fast spreading of fake news stories on social media can cause inestimable social harm. Developing effective methods to detect them early is of paramount importance. A major challenge of fake news early detection is fully utilizing the limited data observed at the early stage of news propagation and then learning useful patterns from it for identifying fake news. In this article, we propose a novel deep neural network to detect fake news early. It has three novel components: (1) a status-sensitive crowd response feature extractor that extracts both text features and user features from combinations of users' text response and their corresponding user profiles, (2) a position-aware attention mechanism that highlights important user responses at specific ranking positions, and (3) a multi-region mean-pooling mechanism to perform feature aggregation based on multiple window sizes. Experimental results on two real-world datasets demonstrate that our proposed model can detect fake news with greater than 90% accuracy within 5 minutes after it starts to spread and before it is retweeted 50 times, which is significantly faster than state-of-the-art baselines. Most importantly, our approach requires only 10% labeled fake news samples to achieve this effectiveness under PU-Learning settings.
机译:虚假新闻故事对社交媒体的快速传播可能导致无价的社会伤害。开发有效的方法来早期检测它们是至关重要的。假新闻早期检测的一项重大挑战是充分利用新闻传播早期观察到的有限数据,然后从中学习有用的模式来识别假新闻。在本文中,我们提出了一种新的深度神经网络,以早期检测假新闻。它有三个新的组件:(1)一个地位敏感的人群响应特征提取器,可以从用户文本响应的组合和它们对应的用户配置文件中提取文本特征和用户特征,(2)一个突出显示重要的位置感知注意机制在特定排名位置的用户响应,以及(3)多区域均值池机制,用于基于多个窗口尺寸执行特征聚合。在两个现实世界数据集上的实验结果表明,我们的拟议模型可以在它开始传播之前5分钟内检测超过90%的准确度,并且在转发50次之前,这比速度快艺术基线。最重要的是,我们的方法只需要10%的假冒新闻样本来实现在PU学习环境下的这种有效性。

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