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An evolutionary approach for personalization of content delivery in e-learning systems based on learner behavior forcing compatibility of learning materials

机译:基于学习者行为强迫学习材料兼容的电子学习系统中内容交付的个性化进化方法

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This paper presents an evolutionary approach for personalizing learning content for individual learners from a very large database in an e-learning system. The proposed work improves the quality of the self-learning process in an adaptive e-learning system by providing the most suitable content for individual learners. The paper depicts the results of personalizing the learning process by tuning the compatibility level of the learning objects with respect to the learning style of the learner, the complexity level of the learning objects with respect to the knowledge level of the learner and the interactivity level of the learner based on the satisfaction level of the learner during the learning process using a modified form of genetic algorithm named as Compatible Genetic Algorithm (CGA). The proposed work improves the efficiency of the genetic algorithms by forcing compatibility in the learning objects which has not been implemented so far in existing systems. Forcing compatibility into the search space not only helps to reduce the search space but also fills the search space with better chromosomes. The results show improvement in scores of the learners and also in their satisfaction levels. A comparison with the standard algorithms shows improvement in execution time, number of executing generations and fitness values. The results indicate that personalization of content delivery based on behavioral traits of learners leads to better learning. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种进化的方法,用于从电子学习系统中非常大的数据库中为单个学习者个性化学习内容。拟议的工作通过为个体学习者提供最合适的内容,提高了自适应电子学习系统中自学过程的质量。本文描述了通过根据学习者的学习风格调整学习对象的兼容性级别,相对于学习者的知识水平以及学习对象的交互性级别来调整学习对象的兼容性级别,个性化学习过程的结果。根据学习者在学习过程中的满意程度,使用改进形式的遗传算法(称为兼容遗传算法(CGA))对学习者进行学习。所提出的工作通过强迫学习对象中的兼容性来提高遗传算法的效率,而在现有系统中到目前为止还没有实现。强制兼容性到搜索空间中,不仅有助于减少搜索空间,而且可以使搜索空间充满更好的染色体。结果显示学习者的分数及其满意度得到改善。与标准算法的比较显示执行时间,执行代数和适用性值得到了改善。结果表明,基于学习者的行为特征的内容交付的个性化可以带来更好的学习。 (C)2017 Elsevier Ltd.保留所有权利。

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