学习分析的评估,以确定在线讨论中的探索性对话

Rebecca Ferguson, Zhongyu Wei, Yulan He, S. B. Shum
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引用次数: 46

摘要

社会学习分析关注的是学习者在其社会和文化环境中共同构建知识的过程。在这个过程中使用的最重要的工具之一是语言。在本文中,我们采用探索性对话,一种共同推理的联合形式,作为学习正在发生的外部指标。使用计算语言学领域内开发的技术,我们在先前的工作基础上使用提示短语来识别在线讨论中的探索性对话。这种类型对话的自动检测被定义为一个二元分类任务,该任务将对在线讨论的每个贡献标记为探索性或非探索性。我们描述了一个自我训练框架的发展,该框架通过整合线索短语匹配和k近邻分类,使用话语特征和主题特征进行分类。用一个为期两天的在线会议档案构建的语料库进行的实验表明,我们提出的框架优于其他方法。使用自我训练框架开发的分类器能够对在线会议中不同时间发生的学习对话以及个人参与者的贡献进行有用的区分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evaluation of learning analytics to identify exploratory dialogue in online discussions
Social learning analytics are concerned with the process of knowledge construction as learners build knowledge together in their social and cultural environments. One of the most important tools employed during this process is language. In this paper we take exploratory dialogue, a joint form of co-reasoning, to be an external indicator that learning is taking place. Using techniques developed within the field of computational linguistics, we build on previous work using cue phrases to identify exploratory dialogue within online discussion. Automatic detection of this type of dialogue is framed as a binary classification task that labels each contribution to an online discussion as exploratory or non-exploratory. We describe the development of a self-training framework that employs discourse features and topical features for classification by integrating both cue-phrase matching and k-nearest neighbour classification. Experiments with a corpus constructed from the archive of a two-day online conference show that our proposed framework outperforms other approaches. A classifier developed using the self-training framework is able to make useful distinctions between the learning dialogue taking place at different times within an online conference as well as between the contributions of individual participants.
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