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CbI: Improving Credibility of User-Generated Content on Facebook

机译:CbI:提高Facebook上用户生成内容的可信度

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Online Social Networks (OSNs) have become a popular platform to share information with each other. Fake news often spread rapidly in OSNs especially during news-making events, e.g. Earthquake in Chile (2010) and Hurricane Sandy in the USA (2012). A potential solution is to use machine learning techniques to assess the credibility of a post automatically, i.e. whether a person would consider the post believable or trustworthy. In this paper, we provide a fine-grained definition of credibility. We call a post to be credible if it is accurate, clear, and timely. Hence, we propose a system which calculates the Accuracy, Clarity, and Timeliness (A-C-T) of a Facebook post which in turn are used to rank the post for its credibility. We experiment with 1,056 posts created by 107 pages that claim to belong to news-category. We use a set of 152 features to train classification models each for A-C-T using supervised algorithms. We use the best performing features and models to develop a RESTful API and a Chrome browser extension to rank posts for its credibility in real-time. The random forest algorithm performed the best and achieved ROC AUC of 0.916, 0.875, and 0.851 for A-C-T respectively.
机译:在线社交网络(OSN)已成为相互共享信息的流行平台。假新闻通常会在OSN中迅速传播,尤其是在新闻发布活动期间,例如智利地震(2010年)和美国桑迪飓风(2012年)。潜在的解决方案是使用机器学习技术自动评估职位的信誉,即一个人是否认为该职位是可信的或可信赖的。在本文中,我们提供了可信度的细粒度定义。如果准确,清晰和及时,我们认为该职位是可信的。因此,我们提出了一种计算Facebook帖子的准确性,清晰度和及时性(A-C-T)的系统,然后使用该系统对帖子的可信度进行排名。我们尝试了107个页面创建的1,056个帖子,这些帖子声称属于新闻类别。我们使用一组152个功能来使用监督算法训练A-C-T的每个分类模型。我们使用性能最好的功能和模型来开发RESTful API和Chrome浏览器扩展程序,以实时对其信誉进行排名。对于A-C-T,随机森林算法表现最佳,ROC AUC分别为0.916、0.875和0.851。

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