Improving Knowledge Handling by Building Intelligent Systems Using Social Agent Modelling

Fayoumi, Amjad and Faris, Hossam and Grippa, Francesca (2009) Improving Knowledge Handling by Building Intelligent Systems Using Social Agent Modelling. In: Computing in the Global Information Technology, International Multi-Conference on (2009). IEEE Computer Society, la Bocca, France, pp. 86-91. ISBN 9780769537511

Full text not available from this repository.

Abstract

Any purposeful organization can be understood as a value network. The main goal of this network is to deliver the highest value from the interdependencies between nodes. Improvement in this domain requires to increase efficiency, response time, knowledge availability and knowledge storing. One of the most interesting research topics in the field of multi-agent systems is the definition of models with the aim of representing social structures such as organizations and coalitions, to control the emergent behaviour of open systems. This paper presents an approach to capture knowledge from social environment by building new features in the social network analysis systems and use this knowledge as a source for modelling multi-agent systems. This paper presents a different approach to capture knowledge from social environment and handle social aspects in intelligent analysis systems by developing and simulating agent’s behaviour. Those proposed methods will help to represent knowledge in a new way as well as simulate and automate knowledge flow.

Item Type:
Contribution in Book/Report/Proceedings
ID Code:
127393
Deposited By:
Deposited On:
11 Sep 2018 08:24
Refereed?:
Yes
Published?:
Published
Last Modified:
05 Aug 2020 10:05