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Utilizing Dynamic Bayes Nets to Improve Early Prediction Models of Self-regulated Learning

机译:利用动态贝叶斯网改善自我监管学习的早期预测模型

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Student engagement and motivation during learning activities is tied to better learning behaviors and outcomes and has prompted the development of learner-guided environments. These systems attempt to personalize learning by allowing students to select their own tasks and activities. However, recent evidence suggests that not all students are equally capable of guiding their own learning. Some students are highly self-regulated learners and are able to select learning goals, identify appropriate tasks and activities to achieve these goals and monitor their progress resulting in improved learning and motivational benefits over traditional learning tasks. Students who lack these skills are markedly less successful in self-guided learning environments and require additional scaffolding to be able to navigate them successfully. Prior work has examined these phenomena within the learner-guided environment, CRYSTAL ISLAND, and identified the need for early prediction of students' self-regulated learning abilities. This work builds upon these findings and presents a dynamic Bayesian approach that significantly improves the classification accuracy of student self-regulated learning skills.
机译:学习活动期间的学生参与和动机与更好的学习行为和成果相关联,并促使了学习者引导环境的发展。这些系统试图通过允许学生选择自己的任务和活动来个性化学习。然而,最近的证据表明,并非所有学生都同样能够引导自己的学习。有些学生是高度自我监管的学习者,能够选择学习目标,确定适当的任务和活动,以实现这些目标,并监控他们的进展,从而改善传统学习任务的学习和动机效益。缺乏这些技能的学生在自我导向的学习环境中显着不那么成功,需要额外的脚手架能够成功导航它们。在学习者指导环境,水晶岛的情况下,在学习者导游的环境中审查了这些现象,并确定了需要早期预测学生的自我监管的学习能力。这项工作建立在这些调查结果上,并提出了一种动态的贝叶斯方法,显着提高了学生自我监管的学习技能的分类准确性。

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