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首页> 外文期刊>Proceedings of the IEEE >Words on the Web: Noninvasive Detection of Emotional Contagion in Online Social Networks
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Words on the Web: Noninvasive Detection of Emotional Contagion in Online Social Networks

机译:网络上的词语:在线社交网络中情感传播的非侵入式检测

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摘要

Does semantic expression spread online from person to person? And if so, what kinds of expression are most likely to spread? To address these questions, we developed a nonexperimental, noninvasive method to detect and quantify contagion of semantic expression in massive online social networks, which we review and discuss here. Using only observational data, the method avoids performing emotional experiments on users of online social networks, a research practice that recently became an object of criticism and concern. Our model combines geographic aggregation and instrumental variables regression to measure the effect of an exogenous variable on an individual's expression and the influence of this change on the expression of others to whom that individual is socially connected. In a previous work, we applied our method to the emotional content of posts generated by a large sample of users over a period of three years. Those results suggest that each post expressing a positive or negative emotion can cause friends to generate one to two additional posts expressing the same emotion, and it also inhibits their use of the opposite emotion. Here, we generalize our method so it can be applied to contexts different than emotional expression and to different forms of content generated by the users of online platforms. The method allows us to determine the usage of words in the same semantic category spread, and to estimate a signed relationship between different semantic categories, showing that an increase in the usage of one category alters the usage of another category in one's social contacts. Finally, it also allows us to estimate the total cumulative effect that a person has on all of her social contacts.
机译:语义表达会在人与人之间在线传播吗?如果是这样,哪种表达最有可能传播?为了解决这些问题,我们开发了一种非实验性,非侵入性的方法来检测和量化大规模在线社交网络中语义表达的传染性,我们将在此进行回顾和讨论。该方法仅使用观察数据,就避免了对在线社交网络用户进行情感实验,而这种研究实践最近已成为批评和关注的对象。我们的模型结合了地理汇总和工具变量回归,以衡量外源变量对个人表达的影响以及此变化对与该人社交的其他人的表达的影响。在以前的工作中,我们将我们的方法应用于三年内大量用户所产生的帖子的情感内容。这些结果表明,每个表达正面或负面情绪的帖子都可以导致朋友产生一两个额外的表达相同情感的帖子,并且还会抑制他们使用相反的情感。在这里,我们对方法进行了概括,因此可以将其应用于不同于情感表达的上下文以及在线平台用户生成的不同形式的内容。该方法使我们能够确定在相同语义类别中使用的单词的用法,并估计不同语义类别之间的签名关系,这表明一个类别的用法的增加会改变一个人的社交联系人中另一类别的用法。最后,它还使我们能够估算一个人对其所有社会交往的总累积影响。

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