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A Soft Computing Decision Support Framework to Improve the e-Learning Experience

机译:软计算决策支持框架,以提高电子学习体验

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In this paper an e-learning decision support framework based on a set of soft computing techniques is presented. The framework is mainly based on the FIR methodology and two of its key extensions: a set of Causal Relevance approaches (CR-FIR), which allows reducing uncertainty during the forecast stage; and a Rule Extraction algorithm (LR-FIR), that extracts comprehensible, actionable and consistent sets of rules describing students' learning behavior. The analyzed data set was gathered from the data generated from user's interaction with an e-learning environment. The introductory course data set was analyzed with the proposed framework with the goal to help virtual teachers to understand the underlying relations between the actions of the learners, and make more interpretable the student's learning behavior. The obtained results improve the system understanding and provide valuable knowledge to teachers about the course performance.
机译:在本文中,提出了一种基于一组软计算技术的电子学习决策支持框架。该框架主要基于FIR方法和其两个关键扩展:一组因果相关方法(CR-FIR),允许在预测阶段减少不确定性;和一个规则提取算法(LR-FIR),提取了描述学生的学习行为的可辨认,可操作和一致的规则。分析的数据集从用户与电子学习环境的交互中生成的数据收集。通过拟议的框架分析了介绍性课程数据集,以帮助虚拟教师了解学习者行为之间的潜在关系,并使学生的学习行为更加解释。获得的结果改善了系统的理解,并为教师提供了有价值的知识,了解课程绩效。

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