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Automatic detection of learning styles based on dynamic Bayesian network in adaptive e-learning system

机译:自适应电子学习系统中基于动态贝叶斯网络的学习风格自动检测

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摘要

A large number of studies attest that learning is facilitated if the teaching strategies are in accordance with the students learning styles (LS), making the learning process more effective and considerably improving student's performances. But, traditional approaches for detection of LS are inefficient. This work determines the current preferences through dynamic Bayesian network that represent the matches between LS and teaching strategies in order to determine how much a given strategy is interesting to a student. The LS theory that supports this approach is the LS model proposed by Felder-Silverman's learning styles model (FSLSM). Our approach gradually and constantly adjusts the student model, taking into account students' performances, student's effort, student's intensity, student's resistance and student's attention. Promising results were obtained from experiments, and some of them are discussed in this paper.
机译:大量的研究证明,如果教学策略符合学生的学习风格(LS),则会促进学习,从而使学习过程更有效并显着改善学生的表现。但是,传统的LS检测方法效率低下。这项工作通过动态贝叶斯网络确定了当前的偏好,该偏好表示了LS和教学策略之间的匹配,从而确定了给定的策略对学生来说有多有趣。支持这种方法的LS理论是Felder-Silverman的学习风格模型(FSLSM)提出的LS模型。我们的方法会根据学生的表现,学生的努力程度,学生的强度,学生的抵抗力和学生的注意力,逐步并不断地调整学生的模式。通过实验获得了有希望的结果,并对其中的一些进行了讨论。

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