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JACIII Vol.11 No.10 pp. 1209-1215
doi: 10.20965/jaciii.2007.p1209
(2007)

Paper:

A Qualitative Model for Service Oriented Computing

Jian Ying Zhang*, Hepu Deng**, and Ryszard Kowalczyk*

*Faculty of Information & Communication Technologies, Swinburne University Of Technology, Victoria 3122, Australia

**School of Business Information Technology, RMIT University, Victoria 3010, Australia

Received:
October 25, 2006
Accepted:
August 20, 2007
Published:
December 20, 2007
Keywords:
qualitative model, causal discovery, decision support, fuzzy causal network, service oriented computing
Abstract
In this paper we introduce fuzzy causal network as a qualitative model for service oriented computing. Firstly, we give a brief description of fuzzy causal network. Secondly, we explain how fuzzy causal network can be used as a qualitative model for service oriented computing. Thirdly, We use fuzzy causal network to model a real world problem in the area of service oriented computing to demonstrate the correctness and effectiveness of this model. Finally, we outline some open research problems for further study. The proposed model has potential to become a good framework for causal discovery and decision support in service oriented computing, especially in the cases where intensive interaction among various services are involved.
Cite this article as:
J. Zhang, H. Deng, and R. Kowalczyk, “A Qualitative Model for Service Oriented Computing,” J. Adv. Comput. Intell. Intell. Inform., Vol.11 No.10, pp. 1209-1215, 2007.
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