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Recommender system in collaborative learning environment using an influence diagram

机译:使用影响图的协作学习环境中的推荐人系统

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摘要

Giving useful recommendations to students to improve collaboration in a learning experience requires tracking and analyzing student team interactions, identifying the problems and the target student. Previously, we proposed an approach to track students and assess their collaboration, but it did not perform any decision analysis to choose a recommendation for the student. In this paper, we propose an influence diagram, which includes the observable variables relevant for assessing collaboration, and the variable representing whether the student collaborates or not. We have analyzed the influence diagram with two machine learning techniques: an attribute selector, indicating the most important attributes that the model uses to recommend, and a decision tree algorithm revealing four different scenarios of recommendation. These analyses provide two useful outputs: (a) an automatic recommender, which can warn of problematic circumstances, and (b) a pedagogical support system (decision tree) that provides a visual explanation of the recommendation suggested.
机译:向学生提供有用的建议以改善学习体验中的协作,需要跟踪和分析学生团队的互动,确定问题和目标学生。以前,我们提出了一种跟踪学生并评估他们的协作的方法,但是它没有执行任何决策分析来为学生选择推荐。在本文中,我们提出了一个影响图,其中包括与评估协作相关的可观察变量,以及代表学生是否协作的变量。我们使用两种机器学习技术分析了影响图:一种属性选择器,指示模型用于推荐的最重要属性;以及一种决策树算法,用于揭示四种不同的推荐方案。这些分析提供了两个有用的输出:(a)一个自动推荐器,可以警告有问题的情况,以及(b)一个教学支持系统(决策树),可以直观地说明建议的建议。

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