Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities

Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities

Release Date: November, 2018|Copyright: © 2019 |Pages: 199
DOI: 10.4018/978-1-5225-7413-2
ISBN13: 9781522574132|ISBN10: 1522574131|EISBN13: 9781522574149
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Description & Coverage
Description:

Teachers use e-learning systems to develop course notes and web-based activities to communicate with learners on one side and monitor and classify their progress on the other. Learners use it for learning, communication, and collaboration. Adaptive e-learning systems often employ learner models, and the behavior of an adaptive system varies depending on the data from the learner model and the learner's profile. Without knowing anything about the learner who uses the system, a system would behave in exactly the same way for all learners.

Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities is a collection of research on the use of Bayesian networks and methods as a probabilistic formalism for the management of the learner model in adaptive hypermedia. It specifically discusses comparative studies, transformation rules, and case diagrams that support all phases of the learner model and the use of Bayesian networks and multi-entity Bayesian networks to manage dynamic aspects of this model. While highlighting topics such as developing the learner model, learning management systems, and modeling techniques, this book is ideally designed for instructional designers, course administrators, educators, researchers, and professionals.

Coverage:

The many academic areas covered in this publication include, but are not limited to:

  • Adaptive E-Learning Systems
  • Developing the Learner Model
  • Domain-Specific Information Management
  • Learning Management Systems
  • Learning Styles
  • Modeling Techniques
  • Modern E-Learning
  • Multi-Entity Bayesian Networks
  • Stereotyping Method
  • Teaching Adaptation
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Editor/Author Biographies

Mouenis Anouar Tadlaoui is a PhD research scholar in Computer sciences, at the Laboratory of Informatics, Research Operational and Statistic Applied (LIROSA) at Faculty of Sciences, Abdelmalek Essaadi University. His dissertation research, focus on managing the learner model in Adaptive Hypermedia systems based on Bayesian methods and artificial intelligence. Mouenis Have a Master's degree in Instructional design Multimedia engineering, and a BSc in Web development from Abdelmalek Essaadi University in 2013 and 2011. He has produced several technical outputs, including papers, book chapters, technical presentations, processes, among others in the field of adaptive systems management. In research, his current interests include: E-learning, Adaptive Hypermedia Systems, Artificial Intelligence, and Bayesian Networks.

Mohamed Khaldi, teacher-researcher in pedagogical engineering, e-Learning and Information Technology and Educational Communication, is a Professor of Higher Education at the Ecole Normale Supérieure Tetouan of Abdelmalek Essaadi University Morocco, where he is since 1987. He is a member since 2008 of the Laboratory of Computer Science, Operational Research and Applied Statistics (LIROSA), he is a member since 2017 of the team Computer Science and University Pedagogical Engineering (S2IPU). He is co-author of two books with the publisher IGI Global. He is the lead editor for the research topics Artificial Intelligence and Collaborative Learning in the Classroom for the journal Frontiers in the area of Artificial Intelligence for Human Learning and Behavior Change. He is a reviewer in several journals and scientific member in several international conferences and symposia.(ab27a1c7-b535-4cba-a39d-1565b32d1f2b)

Rommel N. Carvalho is the Auction & Delivery Science Lead at Facebook Marketing Science LATAM. From 2015 to 2017 he was the Chief Data Scientist of the Observatory of Public Spending at the Brazilian Office of the Comptroller General (CGU), where he lead a team of about 20 Data Scientists responsible for monitoring public expenses, finding fraud, and fighting corruption. He has received the second place in the 5th Chico Ribeiro Prize about Quality and Cost Information of Spending in the Public Sector. He finished his Postdoctoral at George Mason University (GMU) in the area of artificial intelligence, data mining, uncertainty, and knowledge discovery in May 2012. During the 3 years of his PhD, he was a Graduate Research Assistant in the Department of Systems Engineering and Operations Research at GMU, Virginia, USA. He received his Master in Computer Science and his Bachelor of Computer Science from University of Brasília (UnB), DF, Brazil, in 2008 and 2003, respectively. He has been working for CGU as an IT expert since 2005 and at UnB as a Professor on the Applied Computer Science Masters program since 2012, when it was created. From 2011 to 2012 he participated in the Transparency Portal team, where his key role was to be the main expert in Open Government Data (OGD). In the end of 2012 he started working as the leader of the Data Science team at the Department of Research and Strategic Information (DIE). One of the projects developed at DIE, the Reference Price Database, won the first place on the CONIP 2013 Excellence Award in the category Management and Geographical Information Systems. He has done research on fraud detection and prevention for the Brazilian Government and situation awareness for the U.S. Navy. With 12 years of experience in the area, he has produced more than 130 different technical outputs, including papers, book chapters, technical presentations, processes, among others.

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