Zouaq, Amal; Nkambou, Roger et Frasson, Claude
(2007).
« An Integrated Approach for Automatic
Aggregation of Learning Knowledge Objects ».
Interdisciplinary Journal of Knowledge and Learning Objects, 3, pp. 135-162.
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Résumé
This paper presents the Knowledge Puzzle, an ontology-based platform designed to facilitate domain
knowledge acquisition from textual documents for knowledge-based systems. First, the
Knowledge Puzzle Platform performs an automatic generation of a domain ontology from documents’
content through natural language processing and machine learning technologies. Second,
it employs a new content model, the Knowledge Puzzle Content Model, which aims to model
learning material from annotated content. Annotations are performed semi-automatically based
on IBM’s Unstructured Information Management Architecture and are stored in an Organizational
memory (OM) as knowledge fragments. The organizational memory is used as a knowledge
base for a training environment (an Intelligent Tutoring System or an e-Learning environment).
The main objective of these annotations is to enable the automatic aggregation of Learning
Knowledge Objects (LKOs) guided by instructional strategies, which are provided through
SWRL rules. Finally, a methodology is proposed to generate SCORM-compliant learning objects
from these LKOs.