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IRS-III: A Broker for Semantic Web Services based Applications

Cabral, Liliana; Domingue, John; Galizia, Stefania; Gugliotta, Alessio; Tanasescu, Vlad; Pedrinaci, Carlos and Norton, Barry (2006). IRS-III: A Broker for Semantic Web Services based Applications. In: The Semantic Web: ISWC 2006, Lecture notes in computer science, Springer, Berlin, pp. 201–214.

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DOI (Digital Object Identifier) Link: http://doi.org/10.1007/11926078_15
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Abstract

In this paper we describe IRS-III which takes a semantic broker based approach to creating applications from Semantic Web Services by mediating between a service requester and one or more service providers. Business organisations can view Semantic Web Services as the basic mechanisms for integrating data and processes across applications on the Web. This paper extends previous publications on IRS by providing an overall description of our framework from the point of view of application development. More specifically, we describe the IRS-III methodology for building applications using Semantic Web Services and illustrate our approach through a use case on e-government.

Item Type: Conference Item
ISBN: 3-540-49029-9, 978-3-540-49029-6
ISSN: 1611-3349
Extra Information: Published version available from www.springerlink.com ISBN 0302-9743
Academic Unit/Department: Faculty of Science, Technology, Engineering and Mathematics (STEM) > Knowledge Media Institute (KMi)
Faculty of Science, Technology, Engineering and Mathematics (STEM)
Interdisciplinary Research Centre: Centre for Research in Computing (CRC)
Item ID: 9632
Depositing User: Users 7283 not found.
Date Deposited: 03 Oct 2007
Last Modified: 04 Oct 2016 11:27
URI: http://oro.open.ac.uk/id/eprint/9632
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