论文标题
利用多源的弱社会监督来早日发现假新闻
Leveraging Multi-Source Weak Social Supervision for Early Detection of Fake News
论文作者
论文摘要
社交媒体极大地使人们能够以前所未有的速度参加在线活动。但是,这种不受限制的访问也加剧了在线错误信息和虚假新闻的传播,这可能会导致混乱和混乱,除非早期发现缓解措施。鉴于新闻事件的迅速发展的性质和有限的注释数据,由于缺乏大量带注释的培训实例,因此很难提早发现,因此假新闻检测的最新系统面临挑战。在这项工作中,我们从用户和内容参与(称为弱社会监督)及其补充公用事业的不同来源中利用多个弱信号来检测假新闻。我们共同利用有限的清洁数据以及从社交活动中的弱信号来培训深度神经网络,以估算不同弱实例的质量。 REALWORLD数据集的实验表明,所提出的框架优于最先进的基准,用于早日检测假新闻,而无需在预测时使用任何用户参与。
Social media has greatly enabled people to participate in online activities at an unprecedented rate. However, this unrestricted access also exacerbates the spread of misinformation and fake news online which might cause confusion and chaos unless being detected early for its mitigation. Given the rapidly evolving nature of news events and the limited amount of annotated data, state-of-the-art systems on fake news detection face challenges due to the lack of large numbers of annotated training instances that are hard to come by for early detection. In this work, we exploit multiple weak signals from different sources given by user and content engagements (referred to as weak social supervision), and their complementary utilities to detect fake news. We jointly leverage the limited amount of clean data along with weak signals from social engagements to train deep neural networks in a meta-learning framework to estimate the quality of different weak instances. Experiments on realworld datasets demonstrate that the proposed framework outperforms state-of-the-art baselines for early detection of fake news without using any user engagements at prediction time.