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Role of Data Mining and Knowledge Discovery in Managing Telecommunication Systems

Role of Data Mining and Knowledge Discovery in Managing Telecommunication Systems
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Author(s): Ibrahiem Mahmoud Mohamed El Emary (King Abdulaziz University, Saudi Arabia)
Copyright: 2011
Pages: 16
Source title: Wireless Technologies for Ambient Assisted Living and Healthcare: Systems and Applications
Source Author(s)/Editor(s): Athina Lazakidou (University of Peloponnese, Greece), Konstantinos Siassiakos (University of Piraeus, Greece)and Konstantinos Ioannou (University of Patras, Greece)
DOI: 10.4018/978-1-61520-805-0.ch002

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Abstract

This chapter is interested in discussing how to use data mining techniques to assist in achieving an acceptable level of quality of service of telecommunication systems. The quality of service is defined as the metrics which are predicated by using the data mining techniques, decision tree, association rules and neural networks. Routing algorithms can use this metric for optimal path selection which in turn will affect positively on the system performance. Also, in this chapter management axis using data mining techniques were handled, i.e., check the status of the telecommunication networks, role of data mining in obtaining optimal configuration, how to use data mining technique to assure high level of security for the telecommunication. The popularity of data mining in the telecommunications industry can be viewed as an extension of the use of expert systems in the telecommunications industry. These systems were developed to address the complexity associated with maintaining a huge network infrastructure and the need to maximize network reliability while minimizing labor costs (Liebowitz, J. 1988). The problem with these expert systems is that they are expensive to develop because it is both difficult and time consuming to elicit the requisite domain knowledge from experts.

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