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Automatic detection of learning styles for an e-learning system

机译:自动检测电子学习系统的学习风格

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摘要

A desirable characteristic for an e-learning system is to provide the learner the most appropriate information based on his requirements and preferences. This can be achieved by capturing and utilizing the learner model. Learner models can be extracted based on personality factors like learning styles, behavioral factors like user's browsing history and knowledge factors like user's prior knowledge. In this paper, we address the problem of extracting the learner model based on Felder-Silverman learning style model. The target learners in this problem are the ones studying basic science. Using NBTree classification algorithm in conjunction with Binary Relevance classifier, the learners are classified based on their interests. Then, learners' learning styles are detected using these classification results. Experimental results are also conducted to evaluate the performance of the proposed automated learner modeling approach. The results show that the match ratio between the obtained learner's learning style using the proposed learner model and those obtained by the questionnaires traditionally used for learning style assessment is consistent for most of the dimensions of Felder-Silverman learning style.
机译:电子学习系统的理想特征是根据学习者的要求和偏好为其提供最合适的信息。这可以通过捕获和利用学习者模型来实现。可以基于个性因素(例如学习风格),行为因素(例如用户的浏览历史记录)和知识因素(例如用户的先验知识)来提取学习者模型。在本文中,我们解决了基于Felder-Silverman学习风格模型提取学习者模型的问题。这个问题的目标学习者是学习基础科学的人。结合使用NBTree分类算法和Binary Relevance分类器,根据学习者的兴趣对他们进行分类。然后,使用这些分类结果来检测学习者的学习风格。还进行了实验结果,以评估所提出的自动学习者建模方法的性能。结果表明,使用Felder-Silverman学习风格的大多数维度,使用建议的学习者模型获得的学习者的学习风格与通过传统上用于学习风格评估的问卷获得的学习者之间的匹配率是一致的。

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