Work place: Department of Computer Science, University of Regina, Regina, SK, Canada
E-mail: sadra@cs.uregina.ca
Website:
Research Interests: Computer systems and computational processes, Computer Architecture and Organization, Systems Architecture, Network Architecture, Database Management System, Information Retrieval
Biography
Sadra Abedinzadeh was born in Tehran, Iran. He received his B.Sc. in computer science and his M.Sc. in software engineering from University of Tehran, Tehran, Iran in 2004, and 2007 respectively.
He started his Ph.D. in computer science at department of Computer Science, University of Regina, Canada in 2008. His main research area is trust management in multi agent systems. His other research interests include human plausible reasoning, theory of rough sets, information retrieval, software architecture, and database systems.
By Sadra Abedinzadeh Samira Sadaoui
DOI: https://doi.org/10.5815/ijisa.2013.04.01, Pub. Date: 8 Mar. 2013
In a virtual society, which consists of several autonomous agents, trust helps agents to deal with the openness of the system by identifying the best agents capable of performing a specific task, or achieving a special goal. In this paper, we introduce ROSTAM, a new approach for agent trust management based on the theory of Rough Sets. ROSTAM is a generic trust management framework that can be applied to any types of multi agent systems. However, the features of the application domain must be provided to ROSTAM. These features form the trust attributes. By collecting the values for these attributes, ROSTAM is able to generate a set of trust rules by employing the theory of Rough Sets. ROSTAM then uses the trust rules to extract the set of the most trusted agents and forwards the user’s request to those agents only. After getting the results, the user must rate the interaction with each trusted agent. The rating values are subsequently utilized for updating the trust rules. We applied ROSTAM to the domain of cross-language Web search. The resulting Web search system recommends to the user the set of the most trusted pairs of translator and search engine in terms of the pairs that return the results with the highest precision of retrieval.
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