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Detecting Antagonistic and Allied Communities on Social Media

机译:在社交媒体上检测对立和盟友社区

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摘要

Community detection on social media has attracted considerable attention for many years. However, existing methods do not reveal the relations between communities. Communities can form alliances or engage in antagonisms due to various factors, e.g., shared or conflicting goals and values. Uncovering such relations can provide better insights to understand communities and the structure of social media. According to social science findings, the attitudes that members from different communities express towards each other are largely shaped by their community membership. Hence, we hypothesize that intercommunity attitudes expressed among users in social media have the potential to reflect their inter-community relations. Therefore, we first validate this hypothesis in the context of social media. Then, inspired by the hypothesis, we develop a framework to detect communities and their relations by jointly modeling users' attitudes and social interactions. We present experimental results using three real-world social media datasets to demonstrate the efficacy of our framework.
机译:多年来,在社交媒体上进行社区检测吸引了相当多的关注。但是,现有方法无法揭示社区之间的关系。由于各种因素,例如共同或冲突的目标和价值观,社区可以结成联盟或进行对抗。发现这种关系可以提供更好的见解,以了解社区和社交媒体的结构。根据社会科学发现,来自不同社区的成员彼此表达的态度很大程度上取决于其社区成员身份。因此,我们假设社交媒体用户之间表达的社区间态度有可能反映他们的社区间关系。因此,我们首先在社交媒体的背景下验证这一假设。然后,根据该假设,我们开发了一个框架,通过共同建模用户的态度和社会互动来检测社区及其关系。我们使用三个现实世界的社交媒体数据集展示了实验结果,以证明我们框架的有效性。

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