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Ontology-Based Recommendation Algorithms for Personalized Education

机译:基于本体的个性教育推荐算法

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This paper presents recommendation algorithms that personalize course and curriculum content for individual students, within the broader scope of Pervasive Cyberinfrastructure for Personalizing Learning and Instructional Support (PERCEPOLIS). The context considered in making recommendations includes the academic background, interests, and computing environment of the student, as well as past recommendations made to students with similar profiles. Context provision, interpretation, and management are the services that facilitate consideration of this information. Context modeling is through a two-level hierarchy of generic and domain ontologies, respectively; reducing the reasoning search space. Imprecise query support increases the flexibility of the recommendation engine, by allowing interpretation of context provided in terms equivalent, but not necessarily identical to database access terms of the system. The relevance of the recommendations is increased by using both individual and collaborative filtering. Correct operation of the algorithms has been verified through prototyping.
机译:本文介绍了个性化个别学生的课程和课程内容的推荐算法,在更广泛的跨跨越跨越跨越人的跨越人的跨越人的跨越赛车税和教学支持(Percepolis)。在提出建议时考虑的上下文包括学生的学术背景,利益和计算环境,以及对具有相似档案的学生提出的过去的建议。上下文规定,解释和管理是有助于考虑此信息的服务。上下文建模分别是通过泛型和域本体的两级层次结构;减少推理搜索空间。不精确的查询支持通过允许对等效项中提供的上下文的解释来提高推荐引擎的灵活性,但不一定与系统的数据库访问项相同。通过使用个人和协作滤波,增加了建议的相关性。通过原型设计验证了算法的正确操作。

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