A Rule-Based Approach for Adaptive Content Recommendation in a Personalized Learning Environment: An Experimental Analysis

Nisha S. Raj, G. RenumolV.
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引用次数: 12

Abstract

Rapidly growing Information and Communication Technologies (ICT) have increased the availability of multimedia learning objects (LO) in the e-learning system. However, the problem is that the system is unable to allocate appropriate learning objects to the learners. Personalized learning environments make the system more adapt to the learner profile, thus improve their performance and quality of learning. The learning style (LS) of a learner is a prominent metric to understand the learner profile. This paper discusses an approach to personalize the content recommendation based on the learning style of the learner. A rule-based expert system is implemented to recommend the content to the learner, where the learner is modeled using a probabilistic learning style model, and the teaching aspects of learning objects are modeled using specific fields of IEEE Learning Object Metadata Standard. The rule-set defined in this paper is used to recommend the most relevant learning objects to the learners. Finally, the recommendations are cross-validated with the LO ranking from a set of 48 participants and found that 75% of recommendations are compatible with the learner choice.
个性化学习环境中基于规则的自适应内容推荐方法:实验分析
快速发展的信息和通信技术(ICT)增加了电子学习系统中多媒体学习对象(LO)的可用性。然而,问题是系统无法为学习者分配合适的学习对象。个性化的学习环境使系统更加适应学习者的特点,从而提高学习者的学习性能和学习质量。学习者的学习风格(LS)是了解学习者概况的重要指标。本文探讨了一种基于学习者学习风格的个性化内容推荐方法。实现了一个基于规则的专家系统来向学习者推荐内容,其中学习者使用概率学习风格模型建模,学习对象的教学方面使用IEEE学习对象元数据标准的特定领域建模。本文定义的规则集用于向学习者推荐最相关的学习对象。最后,将这些建议与来自48名参与者的LO排名进行交叉验证,发现75%的建议与学习者的选择一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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