Mood detection ontology integration with teacher context

Nader N. Nashed, Christine Lahoud, Marie-Hélène Abel, F. Andrès, Bernard Blancan
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引用次数: 1

Abstract

Recommender systems in education improve the teacher’s working process by providing relevant resources to aid his course design in addition to learning new teaching methodologies. However, these systems have limited adaptability according to a global evaluation of teacher’s activities. This approach of user profiling is convenient, but not adequate for teacher’s context description. In our approach, it is assumed that the utilization of teacher’s emotions has an inevitable role to accomplish a full contextual description for teacher. Teacher context ontology (TCO) provides a representation for the teacher’s living and working contexts along with the main educational concepts. In this paper, we introduce a conceptual integration approach between Moodflow@doubleYou emotional data as a concept and TCO ontology. Furthermore, we intend to prove the importance of integrating such concept for sufficient teacher’s context description. The impact of utilization emotional data in educational recommender systems is discussed. Finally, this paper represents the conducted experiments’ results which show the advantage of such integration.
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情绪检测本体与教师语境的集成
教育中的推荐系统通过提供相关资源来帮助教师设计课程以及学习新的教学方法,从而改善了教师的工作过程。然而,根据对教师活动的整体评价,这些系统的适应性有限。这种用户分析方法很方便,但不适合教师的上下文描述。在我们的方法中,我们假设教师情绪的利用对于完成教师的完整情境描述具有不可避免的作用。教师情境本体(TCO)是教师生活和工作情境以及主要教育概念的表征。在本文中,我们引入了Moodflow@doubleYou情感数据作为概念与TCO本体之间的概念集成方法。此外,我们打算证明整合这一概念对于充分的教师情境描述的重要性。讨论了情感数据在教育推荐系统中的应用。最后,本文给出了所进行的实验结果,证明了这种集成的优势。
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