Reference Hub1
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

Copyright: © 2019 |Pages: 199
ISBN13: 9781522574132|ISBN10: 1522574131|EISBN13: 9781522574149|ISBN13 Softcover: 9781522587026
DOI: 10.4018/978-1-5225-7413-2
Cite Book Cite Book

MLA

Tadlaoui, Mouenis Anouar, et al. Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities. IGI Global, 2019. https://doi.org/10.4018/978-1-5225-7413-2

APA

Tadlaoui, M. A., Khaldi, M., & Carvalho, R. N. (2019). Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities. IGI Global. https://doi.org/10.4018/978-1-5225-7413-2

Chicago

Tadlaoui, Mouenis Anouar, Mohamed Khaldi, and Rommel Novaes Carvalho. Bayesian Networks for Managing Learner Models in Adaptive Hypermedia Systems: Emerging Research and Opportunities. Hershey, PA: IGI Global, 2019. https://doi.org/10.4018/978-1-5225-7413-2

Export Reference

Mendeley
Favorite Full-Book Download

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.

Table of Contents

Reset
Front Materials
Title Page
This content has been removed at the discretion of the publisher and the editors.
Copyright Page
This content has been removed at the discretion of the publisher and the editors.
Advances in Educational Technologies and Instructional Design (AETID) Book Series
This content has been removed at the discretion of the publisher and the editors.
Preface
This content has been removed at the discretion of the publisher and the editors.
Acknowledgment
This content has been removed at the discretion of the publisher and the editors.
Chapters
Chapter 1
Section 1  (pages 17-17)
Section 1
This content has been removed at the discretion of the publisher and the editors.
Chapter 2
Section 2  (pages 64-64)
Section 2
This content has been removed at the discretion of the publisher and the editors.
Back Materials
Related Readings
This content has been removed at the discretion of the publisher and the editors.
About the Authors
This content has been removed at the discretion of the publisher and the editors.
Index
This content has been removed at the discretion of the publisher and the editors.

Request Access

You do not own this content. Please login to recommend this title to your institution's librarian or purchase it from the IGI Global bookstore.