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An Approach to Relevancy Detection: contributions to the automatic detection of relevance in social networks

机译:相关性检测方法:对社交网络中自动检测相关性的贡献

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In this paper we analyze the information propagated through three social networks. Previous research has shown that most of the messages posted on Twitter are truthful, but the service is also used to spread misinformation and false rumors. In this paper we focus on the search for automatic methods for assessing the relevance of a given set of posts. We first retrieved from social networks, posts related to trending topics. Then, we categorize them as being news or as being conversational messages, and assessed their credibility. From the gained insights we used features to automatically assess whether a post is news or chat, and to level its credibility. Based on these two experiments we built an automatic classifier. The results from assessing our classifier, which categorizes posts as being relevant or not, lead to a high balanced accuracy, with the potential to be further enhanced.
机译:在本文中,我们分析了通过三个社交网络传播的信息。以前的研究表明,在Twitter上发布的大多数消息都是真实的,但该服务也用于传播错误信息和错误的谣言。在本文中,我们专注于寻找评估给定一组帖子的相关性的自动方法。我们首先从社交网络中检索,与趋势主题相关的帖子。然后,我们将它们分类为新闻或作为会话消息,并评估其可信度。从获得的洞察中,我们使用的功能自动评估帖子是否是新闻或聊天,并达到其可信度。基于这两个实验,我们构建了自动分类器。评估我们的分类器的结果将帖子分类为相关或不相关,导致高均衡的准确性,有可能进一步提高。

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