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Identifying Networks of Semantically-Similar Individuals from Public Discussion Forums

机译:从公共讨论论坛识别语义类似的个人网络

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In identifying communities in the online environment most approaches consider as the basic tie that connects social. actors together some form :of direct contact, such as through communication. Other approaches use surrogates for direct ties including copresense, cooccurrence, or structural equivalence. In contrast, this paper focuses on semantic equivalence among, social actors, regardless of their direct contact. In particular, to index semantic similarity, it measures the entire semantic network across the body of messages an individual produces and compares that network to another person's to index how similar they are. Then it uses this similarity coefficient as the social network tie for network analysis to identify communities of semantic practice. Semantic similarity has some unique value for theory and practice in automated social network analysis. To illustrate this approach, this research extracted all 10,001 posts from a ,public discussion forum authored by 3,272 individuals and represented each author's semantic network based on cooccurrences of all word pairs within three word positions. Pearson correlation coefficients were computed for 5.36 million pairs of individuals using Quadratic. Assignment Procedures (QAP). Authors sharing approximately 50%,of their semantic networks numbered 22. Subsequent network analysis found that they constituted a single group in terms of a community of linguistic practice. A different forum was analyzed as a contrast. Applications of such a procedure can test hypotheses about semantic network similarity in relation to variations in communication frequency and modality More practical purposes would include finding persons of interest to add to a watch list.
机译:在识别在线环境中的社区,大多数方法都认为是连接社交的基本领带。演员在一起某种形式:直接联系,例如通过沟通。其他方法使用替代工具用于直接关系,包括共同阵列,共同电流或结构等效。相比之下,本文重点关注社交行为者之间的语义等价,无论他们的直接接触如何。特别是,为了索引语义相似性,它测量各个语义网络,个人生成并将该网络与另一个人进行比较,以索引它们是多么相似。然后它使用这种相似系数作为网络分析的社交网络领带,以识别语义惯例的社区。语义相似性对自动社交网络分析中的理论和实践具有一些独特的价值。为了说明这种方法,本研究提取了3,272个个人的公开讨论论坛的所有10,001个帖子,并基于三个单词位置中所有单词对的Cooccurrence代表每个作者的语义网络。 Pearson相关系数使用二次曲线计算5.36亿对的个体。分配程序(QAP)。作者分享约50%,其语义网络编号为22.随后的网络分析发现,它们在语言惯例方面构成了一个单一的群体。分析了一个不同的论坛作为对比度。这种过程的应用可以测试关于语义网络相似性的假设,与通信频率的变化和模态更实用的目的将包括找到添加到监视列表的感兴趣者。

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