Title: Data mining model based on multi-agent for the intelligent distributed framework

Authors: Romeo Mark A. Mateo, Jaewan Lee

Addresses: Electronic and Information Engineering, Kunsan National University, Daehak-Ro 1170, Kunsan, 573-701, South Korea. ' Electronic and Information Engineering, Kunsan National University, Daehak-Ro 1170, Kunsan, 573-701, South Korea

Abstract: Most researches in large-scale distributed system only focus on improving a single scheme, and the relationships between the schemes that affect the performance of each scheme are ignored. In this paper, an intelligent distributed framework is introduced to address the use of intelligent models for the adaptive schemes of a distributed system. This paper tackles two aspects; the general model of an agent-based data mining to implement the schemes of distributed object system using data mining algorithms and efficient interactions of the schemes using multi-agent approach. The adaptive schemes use clustering to construct classes for object grouping, classification method to classify the requests using the classes constructed from clustering, and association mining to generate rules for predicting the next object needed to be replicated. These schemes are provided with relationships for the adaptive technique and the interaction is based on the action model of multi-agent system. Simulation result shows significant improvements on serving clients by minimised delay time and efficient load distribution.

Keywords: data mining; multi-agent systems; MAS; distributed systems; agent-based systems; intelligent modelling; clustering; object grouping; classification; association mining; simulation; delay time; load distribution.

DOI: 10.1504/IJIIDS.2010.035579

International Journal of Intelligent Information and Database Systems, 2010 Vol.4 No.4, pp.322 - 336

Published online: 30 Sep 2010 *

Full-text access for editors Full-text access for subscribers Purchase this article Comment on this article