The implementation of teaching interventions in learning needs has received considerable attention, as the provision of the same educational conditions to all students, is pedagogically ineffective. In contrast, more effectively considered the pedagogical strategies that adapt to the real individual skills of the students. An important innovation in this direction is the Adaptive Educational Systems (AES) that support automatic modeling study and adjust the teaching content on educational needs and students' skills. Effective utilization of these educational approaches can be enhanced with Artificial Intelligence (AI) technologies in order to the substantive content of the web acquires structure and the published information is perceived by the search engines. This study proposes a novel Adaptive Educational eLearning System (AEeLS) that has the capacity to gather and analyze data from learning repositories and to adapt these to the educational curriculum according to the student skills and experience. It is a novel hybrid machine learning system that combines a Semi-Supervised Classification method for ontology matching and a Recommendation Mechanism that uses a hybrid method from neighborhood-based collaborative and content-based filtering techniques, in order to provide a personalized educational environment for each student.
翻译:由于向所有学生提供相同的教育条件在教学上没有效果,因此,在教学需求方面实施教学干预措施的工作受到相当的重视,因为向所有学生提供同样的教育条件在教学上是无效的;相反,更有效地考虑适应学生实际个人技能的教学战略;在这方面的一个重要创新是适应性教育制度,支持自动建模研究,调整教育需求和学生技能的教学内容;通过人工智能技术,这些教育方法的有效利用可以得到加强,以便网络的实质性内容获得结构,而且所公布的信息为搜索引擎所感知;本研究报告提出了一个新的适应性教育电子学习系统(AELS),它有能力收集和分析学习库的数据,并根据学生的技能和经验将这些数据与教育课程相适应;这是一个新型的混合机学习系统,它结合了一种半超模化的肿瘤匹配分类法和一种建议机制,使用基于社区的协作和内容的过滤技术的混合方法,为每个学生提供一个个化的教育环境。