Research on fuzzy matching model for semantic Web services

Semantic descriptions of Web services are necessary in order to enable their automatic discovery, composition and execution across heterogeneous users and domains on the basis of ontology. Matching approach is considered as one of the crucial factors to ensure dynamic discovery and composition of Web services. Current matching methods such as UDDI or Larks are inadequate given their inability to abstract and classify Web services. Therefore proposes a novel matching model which exploits fuzzy logic in order to abstract and classify the underlying data of Web services by fuzzy terms and rules. The aim is to make the match between service advertisement with service request more effective and allow vague terms in the search query and to provide more suited services for requesters.

[1]  Stefan Decker,et al.  Ontology-Based Resource Matching in the Grid - The Grid Meets the Semantic Web , 2003, SEMWEB.

[2]  G. Alandjani,et al.  Fuzzy routing in ad hoc networks , 2003, Conference Proceedings of the 2003 IEEE International Performance, Computing, and Communications Conference, 2003..

[3]  Chi-Chun Lo,et al.  Fuzzy matchmaking for Web services , 2005, 19th International Conference on Advanced Information Networking and Applications (AINA'05) Volume 1 (AINA papers).

[4]  Andrew W. Moore,et al.  Bayesian Neural Networks for Internet Traffic Classification , 2007, IEEE Transactions on Neural Networks.

[5]  Anne H. H. Ngu,et al.  Semantic brokering over dynamic heterogeneous data sources in InfoSleuth/sup TM/ , 1999, Proceedings 15th International Conference on Data Engineering (Cat. No.99CB36337).

[6]  Ananta Charan Ojha,et al.  Fuzzy Linguistic Approach to Matchmaking in E-Commerce , 2006, 9th International Conference on Information Technology (ICIT'06).

[7]  Takahiro Kawamura,et al.  Importing the Semantic Web in UDDI , 2002, WES.

[8]  Matthias Klusch,et al.  Larks: Dynamic Matchmaking Among Heterogeneous Software Agents in Cyberspace , 2002, Autonomous Agents and Multi-Agent Systems.

[9]  Sachin Agarwal,et al.  A Fuzzy Logic Approach to Search Results’ Personalization by Tracking User’s Web Navigation Pattern and Psychology , 2005, 17th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'05).

[10]  A. Gomez,et al.  A fuzzy logic system for classifying the contents of a database and searching consultations in natural language , 2006, MELECON 2006 - 2006 IEEE Mediterranean Electrotechnical Conference.

[11]  Chris Tseng,et al.  A perception-based web search with fuzzy semantic , 2006, Fuzzy Logic and the Semantic Web.

[12]  Ian Horrocks,et al.  A software framework for matchmaking based on semantic web technology , 2003, WWW '03.

[13]  Chang-Shing Lee,et al.  A fuzzy ontology and its application to news summarization , 2005, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).