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Intelligent resource discovery using ontology-based resource profiles

Authors :
J Steven Steven
Dan Crichton
Sean Kelly
Chris A Mattmann
Jerry Crichton
Thuy Tran
Source :
Data Science Journal, Vol 4, Pp 171-188 (2006)
Publication Year :
2006
Publisher :
Ubiquity Press, 2006.

Abstract

Successful resource discovery across heterogeneous repositories is highly dependent on the semantic and syntactic homogeneity of the associated resource descriptions in each repository. Ideally, consistent resource descriptions are easily extracted from each repository, expressed using standard syntactic and semantic structures, and managed and accessed within a distributed, flexible, and scalable software framework. In practice however, seldom do all three of these elements exist. To help address this situation, the Object Oriented Data Technology (OODT) project at the Jet Propulsion Laboratory has developed an extensible, standards-based resource description scheme that provides the necessary description and management facilities for the discovery of resources across heterogeneous repositories. The OODT resource description scheme can be used across scientific domains to describe any resource. It uses a small set of generally accepted, broadly-scoped descriptors while also providing a mechanism for the inclusion of domain-specific descriptors. In addition, the OODT scheme can be used to capture hierarchical, relational and recursive relationships between resources. In this paper we expand on prior work and describe an intelligent resource discovery framework that consists of separate software and data architectures focusing on the standard resource description scheme. We illustrate intelligent resource discovery using a case study that provides efficient search across distributed repositories using common interfaces and a hierarchy of resource descriptions derived from a complex, domain-specific ontology.

Details

Language :
English
ISSN :
16831470
Volume :
4
Database :
Directory of Open Access Journals
Journal :
Data Science Journal
Publication Type :
Academic Journal
Accession number :
edsdoj.415c853e830f4d2c882b94f7ccb2589b
Document Type :
article
Full Text :
https://doi.org/10.2481/dsj.4.171