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Dynamic Identification of Learning Styles in MOOC Environment Using Ontology Based Browser Extension

机译:基于本体基于浏览器扩展的MooC环境中学习方式的动态识别

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With the advent of the era of big data and Web 3.0 on the horizon, different types of online deliverable resources in the pedagogical field have also become raft. Massive Open Online Courses (MOOCs) are the most important of such learning resources that provide many courses at different levels for the learners on the go. The data generated by these MOOCs, however, is often unorganized and difficult to track or is not used to the extent that allows identification of learner types to facilitate better learning. The proposed approach in this paper aims to detect the learning style of a learner, interacting with the MOOC portal, dynamically and automatically through a novel, indigenous and in-built browser extension. This extension is used to capture the usage parameters of the learner and analyze learning behavior in real-time. The usage parameters are captured and stored as a learner ontology to ease sharing and operating across different platforms. The learning style so deduced is based on the Felder Silverman Learning Style Model (FSLSM), where learner’s behavior under multiple criteria, vis-`a-vis perception, input, understanding, and processing are measured. Based on the generated ontological semantics of learner’s behavior, multiple models can be made to facilitate precise and efficient learning. The result shows that this state-of-the-art approach identifies and detects the learning styles of the learners automatically and dynamically, i.e., changing over time.
机译:随着地平线上大数据和网络3.0的时代的出现,教学领域的不同类型的在线可交付资源也成为木筏。大规模开放的在线课程(MOOCS)是这些学习资源中最重要的,这些资源为学习者提供了许多不同级别的课程。然而,由这些MOOCS产生的数据通常是未经组织的并且难以跟踪或不习惯允许识别学习者类型以促进更好地学习的程度。本文中提出的方法旨在检测学习者的学习方式,通过新颖,土着和内置的浏览器扩展,动态,自动地和自动地与MoOC门户进行交互。此扩展用于捕获学习者的使用参数并实时分析学习行为。使用参数被捕获并存储为学习本体,以便于在不同平台上进行共享和运行。所以推导的学习风格是基于Felder Silverman学习风格模型(FSLSM),其中测量了学习者在多标准中的行为,VIS-GSA-VI的感知,输入,理解和处理。基于生成的学习者行为的本体论语义,可以使多种型号促进精确高效的学习。结果表明,这种最先进的方法是自动和动态地识别和检测学习者的学习方式,即,随着时间的推移而变化。

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