A Survey of Semantic Web Based Architectures for Adaptive Intelligent Tutoring System

Author:

Jabin Suraiya1,Mustafa K.1

Affiliation:

1. Jamia Millia Islamia Central University, India

Abstract

Most recently, IT-enabled education has become a very important branch of educational technology. Education is becoming more dynamic, networked, and increasingly electronic. Today’s is a world of Internet social networks, blogs, digital audio and video content, et cetera. A few clear advantages of Web-based education are classroom independence and availability of authoring tools for developing Web-based courseware, cheap and efficient storage and distribution of course materials, hyperlinks to suggested readings, and digital libraries. However, there are several challenges in improving Web-based education, such as providing for more adaptivity and intelligence. The main idea is to incorporate Semantic Web technologies and resources to the design of artificial intelligence in education (AIED) systems aiming to update their architectures to provide more adaptability, robustness, and richer learning environments. The construction of such systems is highly complex and faces several challenges in terms of software engineering and artificial intelligence aspects. This chapter addresses state of the art Semantic Web methods and tools used for modeling and designing intelligent tutoring systems (ITS). Also it draws attention of Semantic Web users towards e-learning systems with a hope that the use of Semantic Web technologies in educational systems can help the accomplishment of anytime, anywhere, anybody learning, where most of the web resources are reusable learning objects supported by standard technologies and learning is facilitated by intelligent pedagogical agents, that may be adding the essential instructional ingredients implicitly.

Publisher

IGI Global

Reference49 articles.

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5. Adriana, D. S. J., & José Maria, P. (2008). An ontology-based architecture for intelligent tutoring system. Interdisciplinary Studies in Computer Science, (pp. 25-35). Retrieved from http://www.unisinos.br/publicacoes_cientificas/images/stories/Publicacoes / scientiavol19n1/25a35_art03_jacinto% 5Brev_ok%5D.pdf

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