A link between k nearest neighbour rules and knowledge based systems by squence analysis
Pattern Recognition Letters
Intelligent tutoring systems: an overview
Artificial intelligence and education; vol. 1: learning environments and tutoring systems
Individualized tutoring using an intelligent fuzzy temporal relational database
International Journal of Man-Machine Studies
Journal of Educational Multimedia and Hypermedia
Learning and Applying Case-Based Adaptation Knowledge
ICCBR '01 Proceedings of the 4th International Conference on Case-Based Reasoning: Case-Based Reasoning Research and Development
On Case-Based Knowledge Sharing in Semantic Web
ICTAI '03 Proceedings of the 15th IEEE International Conference on Tools with Artificial Intelligence
Ontological Agents Model based on MAS-CommonKADS methodology
CONIELECOMP '04 Proceedings of the 14th International Conference on Electronics, Communications and Computers
Design Pattern ITS: Student Model Implementation
ICALT '04 Proceedings of the IEEE International Conference on Advanced Learning Technologies
An intelligent tutoring module controlled by BDI agents for an e-learning platform
Expert Systems with Applications: An International Journal
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The student modeling (SM) is a core component in the development of Intelligent Learning Environments (ILEs). In this paper we describe how a Multi-agent Intelligent Learning Environment can provide adaptive tutoring based in Case-Based Student Modeling (CBSM). We propose a SM structured as a multi-agent system composed by four types of agents. These are: the Case Learner Agent (CLA), Tutor Agent (TA), Adaptation Agent (AA), and Orientator Agent (OA). Each student model has a corresponding CLA. The TA Agent selects the adequate teaching strategy. The AA Agent organizes the learning resources and the OA Agent personalizes the learning considering the psychological characteristics of the student. To illustrate the process of student modeling an algorithm will also be presented. To validate the Student Model, we present a case study based an Intelligent Tutoring System for learning in Public Health domain.