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Language Style Matching as a Predictor of Social Dynamics in Small Groups

机译:语言风格匹配是小群体社会动态的预测指标

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摘要

Synchronized verbal behavior can reveal important information about social dynamics. This study introduces the linguistic style matching (LSM) algorithm for calculating verbal mimicry based on an automated textual analysis of function words. The LSM algorithm was applied to language generated during a small group discussion in which 70 groups comprised of 324 individuals engaged in an information search task either face-to-face or via text-based computer-mediated communication. As a metric, LSM predicted the cohesiveness of groups in both communication environments, and it predicted task performance in face-to-face groups. Other language features were also related to the groups' cohesiveness and performance, including word count, pronoun patterns, and verb tense. The results reveal that this type of automated measure of verbal mimicry can be an objective, efficient, and unobtrusive tool for predicting underlying social dynamics. In total, the study demonstrates the effectiveness of using language to predict change in social psychological factors of interest.
机译:同步的言语行为可以揭示有关社会动态的重要信息。本研究介绍了一种基于功能词自动文本分析的语言风格匹配(LSM)算法,用于计算语言模仿。将LSM算法应用于在小组讨论期间生成的语言,其中70个小组由324个人组成,这些个人从事面对面或通过基于文本的计算机介导的信息搜索任务。作为一项度量,LSM可以预测两个通信环境中各组的凝聚力,并可以预测面对面组中的任务性能。其他语言特征也与小组的凝聚力和表现有关,包括字数,代词模式和动词时态。结果表明,这种类型的口头模仿自动测量方法可以成为预测潜在社会动态的客观,有效且通俗的工具。总的来说,该研究证明了使用语言预测所关注的社会心理因素变化的有效性。

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