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Persistence in distance education: A study case using Bayesian network to understand retention

机译:远程教育中的持久性:使用贝叶斯网络理解保持力的研究案例

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This article presents a study on the variables promoting student retention in distance undergraduate courses at Federal University of Pará, aiming to help school managers minimize student attrition and maximize retention until graduation. The theoretical background is based on Rovai's Composite Model and the methodological approach is conditional probability analysis using the Bayesian Networks graphical model. Network modeling has shown that among internal factors after admission to the course (as defined in the Composite Model) face-to-face tutorial sessions need to be better planned and executed, learning materials are still not adequate to online course specificities and the support structure needs to be remodeled.
机译:本文介绍了一项有关促进帕拉联邦大学远程本科课程中留住学生的变量的研究,旨在帮助学校管理人员最大限度地减少学生流失并最大程度地保留留学生直至毕业。理论背景基于Rovai的复合模型,方法论方法是使用贝叶斯网络图形模型进行条件概率分析。网络建模表明,在入学后的内部因素(如“复合模型”中定义的那样)中,需要更好地计划和执行面对面的辅导课,学习材料仍然不足以适应在线课程的特殊性和支持结构需要重塑。

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