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Using Automatic Detection to Identify Students#039; Learning Style in Online Learning Environment -- Meta Analysis

机译:使用自动检测识别在线学习环境中的学生学习风格 - Meta分析

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Numerous studies have been carried out for the past several years concerning the promising method on automatic detection of students' learning style for a better learning adaption. Likewise in this study, we emphasize on presenting the result for the meta-analysis done on previous studies which incorporated the use of literature-based method - narrowing to active and reflective dimensions of Felder and Silverman model via online learning environment. Through the aforementioned method, we managed to critically identify several essential aspects that can benefit and serve as a guideline for implementing an automatic detection of learning style approach in the future. Among the aspects that worth being observed from the presented six studies are online learning platform, relevant features, behavior pattern, and precision. Further discussions on the aspects are presented in the paper.
机译:在过去几年内,已经开展了众多研究,了解了关于自动检测学生学习风格的有希望的方法,以获得更好的学习适应。同样在这项研究中,我们强调在先前研究中呈现的结果,该研究纳入了使用基于文献的方法 - 通过在线学习环境中缩短了Felder和Silverman模型的主动和反射尺寸。通过上述方法,我们设法批判地确定了可能受益的几个基本方面,并作为实施未来学习风格方法的自动检测的指导方针。在呈现的六项研究中值得观察的方面是在线学习平台,相关特征,行为模式和精确度。本文提出了关于这些方面的进一步讨论。

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