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Process Mining and Interaction Data Analytics in a Web-Based Multi-Tabletop Collaborative Learning and Teaching Environment

机译:基于Web的多桌面协作学习与教学环境中的过程挖掘和交互数据分析

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This article builds on the intersection of educational process mining and the automatic analysis of student's collaborative interaction data previously collected from a web-based multi-tabletop learning environment. The main focus of the article was to analyze and interpret the data using several process mining techniques in order to increase the instructor's awareness (knowledge) about the students' collaboration process and group progress in terms of specific quantitative indicators as follows: participation (consisting of participation density, participation rate and participation dynamics metrics), interaction (consisting of interaction density and interaction dynamics metrics), time performance (including the number of time intervals between the activities as well as the duration of idle/inactive periods), similarity of tasks (or symmetry of actions) and division of labor (or symmetry of roles). The empirical findings showed that there are substantial differences between the high and low performance groups.
机译:本文建立在教育过程挖掘与以前从基于Web的多桌面学习环境中收集的学生协作交互数据自动分析的交集的基础上。本文的主要重点是使用几种过程挖掘技术来分析和解释数据,以提高教师对学生合作过程和小组进度的认识(知识),具体指标如下:参与(包括参与密度,参与率和参与动力学指标),交互(由交互密度和交互动力学指标组成),时间绩效(包括活动之间的时间间隔数以及空闲/非活动时间段的持续时间),任务的相似性(或动作的对称性)和分工(或角色的对称性)。实证结果表明,高绩效组和低绩效组之间存在实质性差异。

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