An Hybrid Ontology Matching Mechanism for Adaptive Educational eLearning Environments

Vasiliki Demertzi, Konstantinos Demertzis
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Abstract

Providing the same pedagogical and educational methods to all students is pedagogically ineffective. In contrast, the pedagogical strategies that adapt to the fundamental individual skills of the students have proved to be more effective. An important innovation in this direction is the adaptive educational systems (AESs) that adjust the teaching content on educational needs and students’ skills. Effective utilization of these approaches can be enhanced with artificial intelligence (AI) and semantic web technologies that can increase data generation, access, flow, integration, and comprehension using the same open standards driving the World Wide Web. This study proposes a novel adaptive educational eLearning system (AEeLS) that can gather and analyze data from learning repositories and adapt these to the educational curriculum according to the student’s skills and experience. It is an innovative hybrid machine learning system that combines a semi-supervised classification method for ontology matching and a recommendation mechanism that uses a sophisticated way from neighborhood-based collaborative and content-based filtering techniques to provide a personalized educational environment for each student.
一种适应教育电子学习环境的混合本体匹配机制
为所有学生提供相同的教学和教育方法在教学上是无效的。相反,适应学生个人基本技能的教学策略被证明是更有效的。这一方向的一个重要创新是适应性教育系统(AESs),它根据教育需求和学生的技能来调整教学内容。这些方法的有效利用可以通过人工智能(AI)和语义网技术来增强,这些技术可以使用驱动万维网的相同开放标准来增加数据的生成、访问、流动、集成和理解。本研究提出了一种新的自适应教育电子学习系统(AEeLS),该系统可以从学习库中收集和分析数据,并根据学生的技能和经验将这些数据适应教育课程。它是一种创新的混合机器学习系统,结合了用于本体匹配的半监督分类方法和推荐机制,该机制使用基于邻居的协作和基于内容的过滤技术的复杂方式为每个学生提供个性化的教育环境。
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