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Towards identifying unresolved discussions in student online forums

机译:旨在识别学生在线论坛中尚未解决的讨论

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摘要

Online discussion is a popular form of webbased computer-mediated communication and is a dominant medium for cyber communities in areas of information sharing, customer support and distributed education. Automatic tools for analyzing online discussions are highly desirable for better information management and assistance. For example, a summary of student Q&A discussions or unresolved questions can help the instructor assess student dialogue efficiently, which can lead to better instructor guidance for student learning by discussion. This paper presents an approach for classifying student discussions according to a set of discourse structures, and identifying discussions with confusion or unanswered questions. Inspired by the existing spoken dialogue analysis approaches, we first define a set of forum "speech acts" (F-SAs) that represent roles that individual messages play in threaded Q&A discussions, such as questions, raising issues, and answers. We then model discourse structures in discussion threads using the F-SAs, such as whether a question was replied to with an answer. Finally, we use such discourse structures in classifying and identifying discussions with unanswered questions or unresolved issues. We performed an analysis of the discussion thread classifiers and the system showed accuracies from 0.79 to 0.87 on several discussion classification problems. This analysis of human conversation via online discussions provides a basis for development of future information extraction and intelligent assistance techniques for online discussions.
机译:在线讨论是基于网络的计算机介导的交流的一种流行形式,并且是信息共享,客户支持和分布式教育领域中网络社区的主要媒介。为了更好地管理信息和提供帮助,非常需要用于分析在线讨论的自动工具。例如,学生问答讨论的摘要或未解决的问题可以帮助教师有效地评估学生的对话,从而可以通过讨论为学生的学习提供更好的指导。本文提出了一种根据一组话语结构对学生讨论进行分类的方法,并确定带有混淆或未解决问题的讨论。受现有口语对话分析方法的启发,我们首先定义一组论坛“语音行为”(F-SA),它们代表各个消息在问答环节中所扮演的角色,例如问题,提出问题和答案。然后,我们使用F-SA在讨论线程中对话语结构进行建模,例如是否用答案回答了问题。最后,我们使用这种话语结构来分类和识别带有未解决问题或未解决问题的讨论。我们对讨论线程分类器进行了分析,系统显示了一些讨论分类问题的准确度从0.79到0.87。通过在线讨论对人类对话的分析为开发将来的信息提取和在线讨论的智能辅助技术提供了基础。

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