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Content-free collaborative learning modeling using data mining

机译:使用数据挖掘的无内容协作学习建模

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Modeling user behavior (user modeling) via data mining faces a critical unresolved issue: how to build a collaboration model based on frequent analysis of students in order to ascertain whether collaboration has taken place. Numerous human-based and knowledge-based solutions to this problem have been proposed, but they are time-consuming or domain-dependent. The diversity of these solutions and their lack of common characteristics are an indication of how unresolved this issue remains. Bearing this in mind, our research has made progress on several fronts. First, we have found supportive evidence, based on a collaborative learning experience with hundreds of students over three consecutive years, that an approach using domain independent learning that is transferable to current e-learning platforms helps both students and teachers to manage student collaboration better. Second, the approach draws on a domain-independent modeling method of collaborative learning based on data mining that helps clarify which user-modeling issues are to be considered. We propose two data mining methods that were found to be useful for evaluating student collaboration, and discuss their respective advantages and disadvantages. Three data sources to generate and evaluate the collaboration model were identified. Third, the features being modeled were made accessible to students in several meta-cognitive tools. Their usage of these tools showed that the best approach to encourage student collaboration is to show only the most relevant inferred information, simply displayed. Moreover, these tools also provide teachers with valuable modeling information to improve their management of the collaboration. Fourth, an ontology, domain independent features and a process that can be applied to current e-learning platforms make the approach transferable and reusable. Fifth, several open research issues of particular interest were identified. We intend to address these open issues through research in the near future.
机译:通过数据挖掘对用户行为进行建模(用户建模)面临着一个悬而未决的关键问题:如何基于对学生的频繁分析来建立协作模型,以确定协作是否发生。已经提出了许多基于人的和基于知识的解决方案,但是它们是耗时的或取决于领域的。这些解决方案的多样性以及它们缺乏共同的特征表明了这个问题仍然悬而未决。牢记这一点,我们的研究在几个方面取得了进展。首先,基于连续三年与数百名学生的协作学习经验,我们发现了支持性证据,即一种使用领域独立学习的方法可以转移到当前的电子学习平台,可以帮助学生和老师更好地管理学生的协作。其次,该方法基于基于数据挖掘的协作学习的领域独立建模方法,该方法有助于阐明要考虑的用户建模问题。我们提出了两种数据挖掘方法,这些方法被发现对评估学生的协作很有用,并讨论了它们各自的优缺点。确定了用于生成和评估协作模型的三个数据源。第三,通过几种元认知工具,学生可以访问正在建模的功能。他们对这些工具的使用表明,鼓励学生合作的最佳方法是仅显示最相关的推断信息(简单显示)。此外,这些工具还为教师提供了宝贵的建模信息,以改善他们对协作的管理。第四,本体,领域无关的功能以及可以应用于当前电子学习平台的过程使该方法具有可转移性和可重用性。第五,确定了几个特别感兴趣的开放研究问题。我们打算在不久的将来通过研究解决这些悬而未决的问题。

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