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Characterization of topic-based online communities by combining network data and user generated content

机译:通过组合网络数据和用户生成的内容来表征基于主题的在线社区

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摘要

This study proposes a model for characterizing online communities by combining two types of data: network data and user-generated-content (UGC). The existing models for detecting the community structure of a network employ only network information. However, not all people connected in a network share the same interests. For instance, even if students belong to the same community of "school," they may have various hobbies such as music, books, or sports. Hence, it is more realistic and beneficial for companies to identify communities according to their interests uncovered by their communications on social media. In addition, people may belong to multiple communities such as family, work, and online friends. Our model explores multiple overlapping communities according to their topics identified using two types of data jointly. By way of validating the main features of the proposed model, our simulation study shows that the model correctly identifies the community structure that could not be found without considering both network data and UGC. Furthermore, an empirical analysis using Twitter data clarifies that our model can find realistic and meaningful community structures from large online networks and has a good predictive performance.
机译:本研究提出了一种通过组合两种数据:网络数据和用户生成的内容(UGC)来表征在线社区的模型。用于检测网络的社区结构的现有模型仅使用网络信息。但是,并非所有在网络中连接的人都有相同的利益。例如,即使学生属于同一社区的“学校”,他们也可能拥有音乐,书籍或运动等各种爱好。因此,对于公司在社交媒体上的沟通来揭示的兴趣来确定社区更加逼真和有益。此外,人们可能属于多个社区,如家庭,工作和在线朋友。我们的模型根据使用两种类型的数据共同识别的主题探索多个重叠的社区。通过验证所提出的模型的主要特征,我们的仿真研究表明,模型正确地识别无法在不考虑网络数据和UGC的情况下找不到的社区结构。此外,使用Twitter数据的实证分析阐明了我们的模型可以从大型在线网络找到现实和有意义的社区结构,并具有良好的预测性能。

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