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An adaptive HMM based approach for improving e-Learning methods

机译:基于自适应HMM的改进电子学习方法的方法

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摘要

The evolution of web based interaction and information processing has provided an important platform to conduct e-learning activities. However, most of the current e-learning platforms provide static content without considering learning requirements of all its users. These users may have varying Visual, Auditory and Kinesthetic (VAK) oriented learning curves based on their mental abilities and these individual curves may also change during the course of education. Maladaptive e-Learning systems cannot impart quality content for each student as the users observe the information based on their exclusive learning traits. To address this problem and to enhance the e-learning experience, adaptive methods to impart e-learning contents are of prime interest. This research presents a novel approach to design an e-learning platform with adaptive content delivery. The model proposed in this research is based on clustering of students using K-means algorithm and the course of content delivery is adaptively characterized for each student using Hidden Markov Models. Both techniques are used to devise an adaptive algorithm which efficiently manages the clustering of students based on their VAK aptitudes and predicts the future e-learning framework for these students. This adaptive algorithm can thus be applied to any e-learning platform for optimal content delivery to its users in real-time.
机译:基于Web的交互和信息处理的发展提供了进行电子学习活动的重要平台。但是,当前大多数电子学习平台都提供静态内容,而没有考虑所有用户的学习要求。这些用户可能会基于他们的智力能力而具有不同的面向视觉,听觉和动觉(VAK)的学习曲线,并且这些个体曲线也可能在教育过程中发生变化。恶意电子学习系统无法为每个学生提供优质的内容,因为用户会根据他们的专有学习特征来观察信息。为了解决这个问题并增强电子学习体验,传递电子学习内容的自适应方法是最重要的。这项研究提出了一种新颖的方法来设计具有自适应内容交付功能的电子学习平台。本研究中提出的模型基于使用K-means算法的学生聚类,并且使用隐马尔可夫模型为每个学生自适应地描述了内容交付的过程。两种技术都被用来设计一种自适应算法,该算法根据他们的VAK能力有效地管理学生的聚类,并为这些学生预测未来的电子学习框架。因此,该自适应算法可以应用于任何电子学习平台,以实时向用户最佳内容交付。

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