NJIT eTD: The New Jersey Institute of Technology's electronic Theses & Dissertations
Title:
Ontology learning for the semantic deep web
Author:
An, Yoo Jung
Document Type:
Dissertation
Department:
Department of Computer Science
Degree:
Doctor of Philosophy
Major:
Computer Science
Advisory Committee:
Geller, James
Gehani, Narain
Theodoratos, Dimitri
Wu, Yi-Fang Brook
Lee, Yugyung
Thesis Date:
2008, January
Keywords:
Ontology
Semantic web
Deep web
Naturalness
Web search
Availability:
Unrestricted
Abstract:

Ontologies could play an important role in assisting users in their search for Web pages. This dissertation considers the problem of constructing natural ontologies that support users in their Web search efforts and increase the number of relevant Web pages that are returned. To achieve this goal, this thesis suggests combining the Deep Web information, which consists of dynamically generated Web pages and cannot be indexed by the existing automated Web crawlers, with ontologies, resulting in the Semantic Deep Web. The Deep Web information is exploited in three different ways: extracting attributes from the Deep Web data sources automatically, generating domain ontologies from the Deep Web automatically, and extracting instances from the Deep Web to enhance the domain ontologies. Several algorithms for the above mentioned tasks are presented. Lxperimeiital results suggest that the proposed methods assist users with finding more relevant Web sites. Another contribution of this dissertation includes developing a methodology to evaluate existing general purpose ontologies using the Web as a corpus. The quality of ontologies (QoO) is quantified by analyzing existing ontologies to get numeric measures of how natural their concepts and their relationships are. This methodology was first applied to several major, popular ontologies, such as WordNet, OpenCyc and the UMLS. Subsequently the domain ontologies developed in this research were evaluated from the naturalness perspective.

Complete Thesis:
njit-etd2008-027 (178 pages ~ 10,050 KB pdf)
Feedback:
Please complete this Feedback Form to inform us about your experience using this website. It will assist us in better serving your information needs in the future. Thank You!
Created September 16, 2008
To view these documents you will need the Acrobat Reader Plug-in. If you do not have it you can download it free from