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Do Actions Speak Louder Than Words? Predicting Influence in Twitter using Language and Action Features

机译:行动胜于雄辩吗?使用语言和动作功能预测Twitter中的影响

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This work explores the connection between language, personality, and influence in a social media network. It clusters users based on two types of features: account activity features and stream content (word) features and compares the usefulness of these different types of features in categorizing users according to their influence and leadership potential in the network. Results of clustering using different sets of features are examined to answer questions about distribution of Twitter users from the influence perspective. These results are compared against distributions of personality traits obtained from previous research on personality types and established assessment tools that measure leadership aptitude and style. Experiments with different clustering algorithms are described and their performance and cluster outputs are reported.
机译:这项工作探讨了语言,个性和影响社交媒体网络之间的联系。它群体用户基于两种类型的功能:帐户活动功能和流内容(Word)功能,并根据其在网络中的影响和领导潜力对用户进行分类,比较了这些不同类型的功能的有用性。研究了使用不同特征集群的聚类结果,以回答有关来自影响视角的推特用户分布的问题。将这些结果与从以前的人格类型研究获得的人格性状分布进行比较,并建立了衡量领导能力和风格的评估工具。描述了不同聚类算法的实验,并报告了它们的性能和集群输出。

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