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  1. Home
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  4. Predictive modeling on Telekom Malaysia berhad direct exchange line growth
 
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Predictive modeling on Telekom Malaysia berhad direct exchange line growth

Journal
Proceedings - 2nd International Conference on Computational Intelligence, Modelling and Simulation, CIMSim 2010
Date Issued
2010
Author(s)
Rasli R.M.
Rasli R.M.
Norwawi N.Md.
DOI
10.1109/CIMSiM.2010.80
Abstract
Data mining (DM) is the extraction of hidden predictive information from large databases that has becoming a powerful new technology with great potential to help companies to focus on the most important information in their data warehouses. A predictive model makes a prediction about values of data using known results found from historical data where the best possible outcome based on the previous data is derived. Telekom Malaysia Berhad (TM) is Malaysia's premier communications provider that provides the digital backbone and communication facilities. Direct Exchange Line (DEL) is one of its core telephony services that handle large volume and variety of data in its daily operations. Therefore, it is hard to reveal knowledge structures that can guide decisions in conditions of limited certainty. The main objective of this study is to identify the most appropriate DM techniques (logistic regression, decision trees and neural networks) for predicting DEL growth based on five physical attributes constitute of 672 instances leading to a target (either increase or decrease). The finding is important especially in assisting the prediction of DEL growth in Telekom, thus leading on gaining better understanding on the future of the market based on the current and previous situation. � 2010 IEEE.
Subjects

Data mining

DEL

Predictive modeling t...

Telekom Malaysia Berh...

Communication facilit...

DEL

Historical data

Knowledge structures

Large database

Limited certainty

Logistic regressions

Malaysia

New technologies

Predictive informatio...

Predictive modeling

Predictive modeling t...

Predictive models

Telephony services

Data warehouses

Decision trees

Forecasting

Neural networks

Data mining

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