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Analyzing collaborative learning processes automatically: Exploiting the advances of computational linguistics in computer-supported collaborative learning

机译:自动分析协作学习过程:在计算机支持的协作学习中利用计算语言学的进步

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In this article we describe the emerging area of text classification research focused on the problem of collaborative learning process analysis both from a broad perspective and more specifically in terms of a publicly available tool set called TagHelper tools. Analyzing the variety of pedagogically valuable facets of learners’ interactions is a time consuming and effortful process. Improving automated analyses of such highly valued processes of collaborative learning by adapting and applying recent text classification technologies would make it a less arduous task to obtain insights from corpus data. This endeavor also holds the potential for enabling substantially improved on-line instruction both by providing teachers and facilitators with reports about the groups they are moderating and by triggering context sensitive collaborative learning support on an as-needed basis. In this article, we report on an interdisciplinary research project, which has been investigating the effectiveness of applying text classification technology to a large CSCL corpus that has been analyzed by human coders using a theory-based multidimensional coding scheme. We report promising results and include an in-depth discussion of important issues such as reliability, validity, and efficiency that should be considered when deciding on the appropriateness of adopting a new technology such as TagHelper tools. One major technical contribution of this work is a demonstration that an important piece of the work towards making text classification technology effective for this purpose is designing and building linguistic pattern detectors, otherwise known as features, that can be extracted reliably from texts and that have high predictive power for the categories of discourse actions that the CSCL community is interested in. (http://www.springerlink.com/content/j55358wu71846331/)
机译:在本文中,我们从广泛的角度,尤其是通过称为TagHelper工具的公共可用工具集,描述了文本分类研究的新兴领域,重点关注协作学习过程分析的问题。分析学习者互动的各种教学有价值的方面是一个耗时且费力的过程。通过适应和应用最新的文本分类技术来改进对此类高度有价值的协作学习过程的自动化分析,将使从语料库数据中获得洞察力的工作变得不那么艰巨。通过向教师和辅导员提供有关他们正在主持的小组的报告,并根据需要触发上下文相关的协作学习支持,此努力还具有实现大大改进在线指导的潜力。在本文中,我们报告了一个跨学科的研究项目,该项目一直在研究将文本分类技术应用于大型CSCL语料库的有效性,该语言已由人类编码人员使用基于理论的多维编码方案进行了分析。我们报告了可喜的结果,并包括对重要问题的深入讨论,例如可靠性,有效性和效率,这些问题在决定采用诸如TagHelper工具之类的新技术的适当性时应予以考虑。这项工作的一项主要技术贡献是证明,为此目的,使文本分类技术有效的一项重要工作是设计和构建语言模式检测器(也称为特征),可以从文本中可靠地提取出这种语言检测器,并且具有很高的实用性。 CSCL社区感兴趣的话语动作类别的预测力。(http://www.springerlink.com/content/j55358wu71846331/)

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