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Automated Discovery and Analysis of Social Networks from Threaded Discussions

机译:通过主题讨论自动发现和分析社交网络

摘要

To gain greater insight into the operation of online social networks, we applied Natural Language Processing (NLP) techniques to text-based communication to identify and describe underlying social structures in online communities. This paper presents our approach and preliminary evaluation for content-based, automated discovery of social networks. Our research question is: What syntactic and semantic features of postings in a threaded discussions help uncover explicit and implicit ties between network members, and which provide a reliable estimate of the strengths of interpersonal ties among the network members? To evaluate our automated procedures, we compare the results from the NLP processes with social networks built from basic who-to-whom data, and a sample of hand-coded data derived from a close reading of the text.ududFor our test case, and as part of ongoing research on networked learning, we used the archive of threaded discussions collected over eight iterations of an online graduate class. We first associate personal names and nicknames mentioned in the postings with class participants. Next we analyze the context in which each name occurs in the postings to determine whether or not there is an interpersonal tie between a sender of the posting and a person mentioned in it. Because information exchange is a key factor in the operation and success of a learning community, we estimate and assign weights to the ties by measuring the amount of information exchanged between each pair of the nodes; information in this case is operationalized as counts of important concept terms in the postings as derived through the NLP analyses. Finally, we compare the resulting network(s) against those derived from other means, including basic who-to-whom data derived from posting sequences (e.g., whose postings follow whose). In this comparison we evaluate what is gained in understanding network processes by our more elaborate analyses.
机译:为了对在线社交网络的运行有更深入的了解,我们将自然语言处理(NLP)技术应用于基于文本的交流中,以识别和描述在线社区中潜在的社交结构。本文介绍了基于内容的自动发现社交网络的方法和初步评估。我们的研究问题是:线程讨论中的帖子的哪些语法和语义特征有助于发现网络成员之间的显式和隐式关系,并且可以可靠地估计网络成员之间人际关系的强度?为了评估我们的自动化程序,我们将NLP流程的结果与基于基本“谁是谁”数据建立的社交网络,以及通过仔细阅读文本而得出的手工编码数据样本进行比较。 ud ud在这种情况下,作为正在进行的有关网络学习的研究的一部分,我们使用了在线讨论班的八次迭代中收集的线程讨论档案。我们首先将帖子中提到的个人姓名和昵称与班级参与者联系起来。接下来,我们分析每个名称出现在帖子中的上下文,以确定帖子的发件人和其中提到的人之间是否存在人际关系。因为信息交换是学习社区运作和成功的关键因素,所以我们通过测量每对节点之间交换的信息量来估计并分配权重。在这种情况下,信息将作为NLP分析得出的帖子中重要概念术语的数量进行操作。最后,我们将结果网络与通过其他方式得出的网络进行比较,其中包括从发布顺序(例如,其发布遵循其发布者)得出的基本“谁是谁”数据。在此比较中,我们通过更详尽的分析评估了在理解网络过程中获得的收益。

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