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Content+Context=Classification: Examining the Roles of Social Interactions and Linguist Content in Twitter User Classification

机译:内容+ context =分类:检查社交交互和语言内容的角色在推特用户分类中

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Twitter users demonstrate many characteristics via their online presence. Connections, community memberships, and communication patterns reveal both idiosyncratic and general properties of users. In addition, the content of tweets can be critical for distinguishing the role and importance of a user. In this work, we explore Twitter user classification using context and content cues. We construct a rich graph structure induced by hashtags and social communications in Twitter. We derive features from this graph structure-centrality, communities, and local flow of information. In addition, we perform detailed content analysis on tweets looking at offensiveness and topics. We then examine user classification and the role of feature types (context, content) and learning methods (prepositional, relational) through a series of experiments on annotated data. Our work contrasts with prior approaches in that we use relational learning and alternative, non-specialized feature sets. Our goal is to understand how both content and context are predictive of user characteristics. Experiments demonstrate that the best performance for user classification uses relational learning with varying content and context features.
机译:Twitter用户通过他们的在线在线表现出许多特征。连接,社区成员资格和通信模式显示用户的特殊和常规属性。此外,推文的内容对于区分用户的角色和重要性是至关重要的。在这项工作中,我们使用上下文和内容提示探索Twitter用户分类。我们在Twitter中构建由Hashtags和社交通信引起的丰富的图形结构。我们从此图形结构中心,社区和局部信息流中获得功能。此外,我们还对看冒险和主题的推文进行详细的内容分析。然后,我们通过关于注释数据的一系列实验来检查用户分类和特征类型(上下文,内容)和学习方法(介词,关系)的角色。我们的工作与现有方法对比我们使用关系学习和替代非专业化功能集。我们的目标是了解如何预测用户特征的内容和上下文。实验表明,用户分类的最佳性能使用具有不同内容和上下文特征的关系学习。

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