doi: 10.17706/jsw.10.8.1014-1020
Querying Bibliography Data Based on Linked Data
Abstract—Usually, a common data model is used for creating and getting a résumé in web applications. Though different web applications provide the same quality résumé information, they encounter difficulties in analyzing and processing data in their different sources. Linked data technology allows overcoming these problems by integrating the data coming from different sources, linking large, voluminous, and distributed data sets with semantic sources in web of data, and forming an open linked data cloud. This study mainly aims to combine, publish, and explore the semantic information in the academic résumés of scientists/researchers working in universities and/or research establishments by use of linked data. The study deals with the use and exploration of academic résumé information through linked data approach. It was intended to conduct effective SPARQL queries on linked data network via FOAF-Academic, DBLP and Résumé/Curriculum Vitae (CV) ontologies so that different data sources would be integrated.
Index Terms—Linked data, querying semantic web, semantic web, RDF.
Cite: Yasemin Gültepe, "Querying Bibliography Data Based on Linked Data," Journal of Software vol. 10, no. 8, pp. 1014-1020, 2015.
General Information
ISSN: 1796-217X (Online)
Abbreviated Title: J. Softw.
Frequency: Biannually
APC: 500USD
DOI: 10.17706/JSW
Editor-in-Chief: Prof. Antanas Verikas
Executive Editor: Ms. Cecilia Xie
Google Scholar, ProQuest,
INSPEC(IET), ULRICH's Periodicals
Directory, WorldCat, etcE-mail: jsweditorialoffice@gmail.com
-
Mar 07, 2025 News!
Vol 19, No 4 has been published with online version [Click]
-
Mar 07, 2025 News!
JSW had implemented online submission system [Click]
-
Apr 01, 2024 News!
Vol 14, No 4- Vol 14, No 12 has been indexed by IET-(Inspec) [Click]
-
Apr 01, 2024 News!
Papers published in JSW Vol 18, No 1- Vol 18, No 6 have been indexed by DBLP [Click]
-
Oct 22, 2024 News!
Vol 19, No 3 has been published with online version [Click]