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Activeness and Loyalty Analysis in Event-Based Social Networks

机译:基于事件的社交网络中的激活和忠诚分析

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摘要

Event-based social networks (EBSNs) are widely used to create online social groups and organize offline events for users. Activeness and loyalty are crucial characteristics of these online social groups in terms of determining the growth or inactiveness of the social groups in a specific time frame. However, there is less research on these concepts to clarify the existence of groups in event-based social networks. In this paper, we study the problem of group activeness and user loyalty to provide a novel insight into online social networks. First, we analyze the structure of EBSNs and generate features from the crawled datasets. Second, we define the concepts of group activeness and user loyalty based on a series of time windows, and propose a method to measure the group activeness. In this proposed method, we first compute a ratio of a number of events between two consecutive time windows. We then develop an association matrix to assign the activeness label for each group after several consecutive time windows. Similarly, we measure the user loyalty in terms of attended events gathered in time windows and treat loyalty as a contributive feature of the group activeness. Finally, three well-known machine learning techniques are used to verify the activeness label and to generate features for each group. As a consequence, we also find a small group of features that are highly correlated and result in higher accuracy as compared to the whole features.
机译:基于事件的社交网络(EBSNS)被广泛用于在线社交组,并为用户组织脱机事件。在确定特定时间范围内的社会群体的增长或不动点,活动和忠诚度是这些在线社会群体的关键特征。但是,对这些概念的研究较少,以澄清基于事件的社交网络中的群体存在。在本文中,我们研究了集团活动和用户忠诚的问题,以提供对在线社交网络的新颖洞察力。首先,我们分析EBSN的结构并从爬网数据集生成功能。其次,我们根据一系列时间窗来定义组激活度和用户忠诚度的概念,并提出了一种测量组活动的方法。在这种提出的方​​法中,我们首先计算两个连续时间窗口之间的许多事件的比率。然后,我们开发一个关联矩阵以在连续几个时间窗口后为每个组分配活动标签。同样,我们在时间窗口中收集的参与活动方面测量用户忠诚度,并将忠诚度视为集团活动的贡献特征。最后,使用三种着名的机器学习技术用于验证活动性标签并为每个组生成功能。因此,与整个功能相比,我们还发现一小组具有高度相关性的特征,并导致更高的准确性。

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