Social networking and micro-blogging services, such as Twitter, play an important role in sharing digital information. Despite the popularity and usefulness of social media, there have been many instances where corrupted users found ways to abuse it, as for instance, through raising or lowering user's credibility. As a result, while social media facilitates an unprecedented ease of access to information, it also introduces a new challenge - that of ascertaining the credibility of shared information. Currently, there is no automated way of determining which news or users are credible and which are not. Hence, establishing a system that can measure the social media user's credibility has become an issue of great importance. Assigning a credibility score to a user has piqued the interest of not only the research community but also most of the big players on both sides - such as Facebook, on the side of industry, and political parties on the societal one. In this work, we created a model which, we hope, will ultimately facilitate and support the increase of trust in the social network communities. Our model collected data and analysed the behaviour of~50,000 politicians on Twitter. Influence score, based on several chosen features, was assigned to each evaluated user. Further, we classified the political Twitter users as either trusted or untrusted using random forest, multilayer perceptron, and support vector machine. An active learning model was used to classify any unlabelled ambiguous records from our dataset. Finally, to measure the performance of the proposed model, we used precision, recall, F1 score, and accuracy as the main evaluation metrics.
翻译:社交网络和微博客服务,如Twitter等,在分享数字信息方面发挥着重要作用。尽管社交媒体受到欢迎和有用,但许多情况下腐败的用户发现滥用信息的方式,例如通过提高或降低用户的可信度。因此,社交媒体为获取信息提供了前所未有的便利,但也带来了新的挑战,即确定共享信息的可信度。目前,没有自动的方法确定哪些新闻或用户可信,哪些用户不可信。因此,建立一个能够衡量社交媒体用户信誉的系统已成为一个非常重要的问题。向用户指派信誉分数不仅激化研究界的兴趣,而且激化了双方大多数大玩家的兴趣,例如:在行业方面,Facebook,以及社会方面的政党。在这项工作中,我们创建了一个模式,我们希望,最终将促进和支持社会网络社区信任的增强。我们的模式收集了数据,分析了推特上5万名政治家的行为。根据若干选定的标准,给用户指派了一个不可靠的信用分数,不仅吸引了研究界的利益,而且使双方的大多数大玩家都有兴趣,例如Facebook等行业以及社会政党。在这项工作中,我们创造了一个模型,最终将我们用来进行货币级数据评级,然后对每一个用户进行分类。