Online social media have become an integral part of our social beings. Analyzing conversations in social media platforms can lead to complex probabilistic models to understand social interaction networks. In this paper, we present a modeling approach for characterizing social interaction networks by jointly inferring user communities and interests based on social media interactions. We present several pattern inference models: i) Interest pattern model (IPM) captures population level interaction topics, ii) User interest pattern model (UIPM) captures user specific interaction topics, and iii) Community interest pattern model (CIPM) captures both community structures and user interests. We test our methods on Twitter data collected from Purdue University community. From our model results, we observe the interaction topics and communities related to two big events within Purdue University community, namely Purdue Day of Giving and Senator Bernie Sanders' visit to Purdue University as part of Indiana Primary Election 2016. Constructing social interaction networks based on user interactions accounts for the similarity of users' interactions on various topics of interest and indicates their community belonging further beyond connectivity. We observed that the degree-distributions of such networks follow power-law that is indicative of the existence of fewer nodes in the network with higher levels of interactions, and many other nodes with less interactions. We also discuss the application of such networks as a useful tool to effectively disseminate specific information to the target audience towards planning any large-scale events and demonstrate how to single out specific nodes in a given community by running network algorithms.
翻译:社交媒体在线对话可以导致复杂的概率模型,以了解社交互动网络。在本文中,我们提出了一个模型方法,通过在社交媒体互动的基础上联合推断用户群体和利益,来描述社会互动网络的特征。我们展示了几种模式推论模型:一) 利益模式(IPM)反映人口层面的互动专题,二) 用户兴趣模式模式(UIPM)反映用户具体互动专题,三) 社区利益模式模式(CIPM)反映社区结构和用户利益。我们在Purdudu大学社区收集的Twitter数据上测试我们的方法。我们从模型结果中,我们观察与普鲁杜德大学社区两次大型活动有关的互动主题和社区,即普鲁杜德捐赠日和参议员伯尼·桑德斯访问普杜德大学,作为2016年印第安纳初级选举的一部分。根据用户互动账户建立社会互动网络,说明用户在各种兴趣专题上的相互作用相似性,并显示其社区归属超出连通性。我们观察到,这些网络的级别分配程度沿Purdude大学社区社区收集的数据数据。我们观察了普尔杜德大学社区社区社区内两个大型活动之间的互动关系,与特定网络之间没有多少次,我们与特定信息网络有效地讨论了特定网络的网络,没有多少信息互动。