Cover image for Ontology Learning and Population : Bridging the Gap between Text and Knowledge.
Ontology Learning and Population : Bridging the Gap between Text and Knowledge.
Title:
Ontology Learning and Population : Bridging the Gap between Text and Knowledge.
Author:
Buitelaar, P.
ISBN:
9781607502968
Personal Author:
Physical Description:
1 online resource (292 pages)
Series:
Frontiers in Artificial Intelligence and Applications
Contents:
Title page -- On the "Ontology" in Ontology Learning -- Foreword -- Contents -- Extracting Terms and Synonyms -- The XTREEM Methods for Ontology Learning from Web Documents -- Taxonomy and Concept Learning -- Extracting Concept Descriptions from the Web: The Importance of Attributes and Values -- Learning Expressive Ontologies -- From Glossaries to Ontologies: Extracting Semantic Structure from Textual Definitions -- Learning Relations -- Unsupervised Learning of Semantic Relations for Molecular Biology Ontologies -- Ontology Population -- NLP Techniques for Term Extraction and Ontology Population -- Weakly Supervised Approaches for Ontology Population -- Information Extraction and Semantic Annotation of Wikipedia -- Automatically Harvesting and Ontologizing Semantic Relations -- Methodology -- The TERMINAE Method and Platform for Ontology Engineering from Texts -- A Methodology for Ontology Learning -- Evaluation -- Strategies for the Evaluation of Ontology Learning -- Author Index.
Abstract:
The promise of the Semantic Web is that future web pages will be annotated not only with bright colors and fancy fonts as they are now, but with annotation extracted from large domain ontologies that specify, to a computer in a way that it can exploit, what information is contained on the given web page. The presence of this information will allow software agents to examine pages and to make decisions about content as humans are able to do now. The classic method of building an ontology is to gather a committee of experts in the domain to be modeled by the ontology, and to have this committee agree on which concepts cover the domain, on which terms describe which concepts, on what relations exist between each concept and what the possible attributes of each concept are.All ontology learning systems begin with an ontology structure, which may just be an empty logical structure, and a collection of texts in the domain to be modeled. An ontology learning system can be seen as an interplay between three things: an existing ontology, a collection of texts, and lexical syntactic patterns. The Semantic Web will only be a reality if we can create structured, unambiguous ontologies that model domain knowledge that computers can handle. The creation of vast arrays of such ontologies, to be used to mark-up web pages for the Semantic Web, can only be accomplished by computer tools that can extract and build large parts of these ontologies automatically. This book provides the state-of-art of many automatic extraction and modeling techniques for ontology building. The maturation of these techniques will lead to the creation of the Semantic Web.
Local Note:
Electronic reproduction. Ann Arbor, Michigan : ProQuest Ebook Central, 2017. Available via World Wide Web. Access may be limited to ProQuest Ebook Central affiliated libraries.
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