DocumentCode
1070830
Title
Evaluating the Generation of Domain Ontologies in the Knowledge Puzzle Project
Author
Zouaq, Amal ; Nkambou, Roger
Author_Institution
Univ. of Quebec at Montreal, Montreal, QC, Canada
Volume
21
Issue
11
fYear
2009
Firstpage
1559
Lastpage
1572
Abstract
One of the goals of the knowledge puzzle project is to automatically generate a domain ontology from plain text documents and use this ontology as the domain model in computer-based education. This paper describes the generation procedure followed by TEXCOMON, the knowledge puzzle ontology learning tool, to extract concept maps from texts. It also explains how these concept maps are exported into a domain ontology. Data sources and techniques deployed by TEXCOMON for ontology learning from texts are briefly described herein. Then, the paper focuses on evaluating the generated domain ontology and advocates the use of a three-dimensional evaluation: structural, semantic, and comparative. Based on a set of metrics, structural evaluations consider ontologies as graphs. Semantic evaluations rely on human expert judgment, and finally, comparative evaluations are based on comparisons between the outputs of state-of-the-art tools and those of new tools such as TEXCOMON, using the very same set of documents in order to highlight the improvements of new techniques. Comparative evaluations performed in this study use the same corpus to contrast results from TEXCOMON with those of one of the most advanced tools for ontology generation from text. Results generated by such experiments show that TEXCOMON yields superior performance, especially regarding conceptual relation learning.
Keywords
computer aided instruction; expert systems; ontologies (artificial intelligence); software tools; text analysis; TEXCOMON; computer-based education; concept maps; conceptual relation learning; data sources; domain ontology; human expert judgment; knowledge puzzle ontology learning tool; knowledge puzzle project; ontology generation; semantic evaluations; state-of-the-art tools; text documents; Concept learning; domain engineering; knowledge acquisition; ontology design.;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2009.25
Filename
4752828
Link To Document