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Automated discovery of social networks in online learning communities.

机译:在在线学习社区中自动发现社交网络。

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摘要

As a way to gain greater insights into the operation of online communities, this dissertation applies automated text mining techniques to text-based communication to identify, describe and evaluate underlying social networks among online community members. The main thrust of the study is to automate the discovery of social ties that form between community members, using only the digital footprints left behind in their online forum postings. Currently, one of the most common but time consuming methods for discovering social ties between people is to ask questions about their perceived social ties. However, such a survey is difficult to collect due to the high investment in time associated with data collection and the sensitive nature of the types of questions that may be asked. To overcome these limitations, the dissertation presents a new, content-based method for automated discovery of social networks from threaded discussions, referred to as 'name network'. As a case study, the proposed automated method is evaluated in the context of online learning communities. The results suggest that the proposed 'name network' method for collecting social network data is a viable alternative to costly and time-consuming collection of users' data using surveys. The study also demonstrates how social networks produced by the 'name network' method can be used to study online classes and to look for evidence of collaborative learning in online learning communities. For example, educators can use name networks as a real time diagnostic tool to identify students who might need additional help or students who may provide such help to others. Future research will evaluate the usefulness of the 'name network' method in other types of online communities.
机译:为了获得对在线社区运营的更多见解,本文将自动文本挖掘技术应用于基于文本的交流,以识别,描述和评估在线社区成员之间的底层社交网络。该研究的主要目的是仅使用其在线论坛帖子中留下的数字足迹来自动发现社区成员之间形成的社会联系。当前,发现人与人之间社会纽带的最常见但最耗时的方法之一是询问有关他们感知的社会纽带的问题。然而,由于与数据收集有关的时间上的大量投资以及可能提出的问题类型的敏感性,这种调查难以收集。为了克服这些限制,本文提出了一种新的基于内容的方法,用于从多线程讨论中自动发现社交网络,称为“名称网络”。作为案例研究,在在线学习社区的背景下对提出的自动化方法进行了评估。结果表明,所提出的用于收集社交网络数据的“名称网络”方法是一种可行的替代方法,可以替代使用调查进行的昂贵且耗时的用户数据收集。这项研究还展示了如何使用“名称网络”方法产生的社交网络来研究在线课程并寻找在线学习社区中协作学习的证据。例如,教育工作者可以使用名称网络作为实时诊断工具,以识别可能需要其他帮助的学生或可能向他人提供这种帮助的学生。未来的研究将评估“名称网络”方法在其他类型的在线社区中的有效性。

著录项

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Library Science.;Computer Science.;Information Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 119 p.
  • 总页数 119
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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