Application of data mining techniques in customer realationship management for an automobile company

This work analyzes well-known DM techniques in Weka workbench, and reports the simulation results of applying four selected DM techniques and classifiers in the open source workbench to the Customer Relationship Management (CRM) problem in an automobile enterprise. It is proposed that data mining te...

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Main Authors: Tang A.Y.C., Azami N.H., Osman N.
Other Authors: 36806985400
Format: Conference Paper
Published: 2023
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spelling my.uniten.dspace-304052024-04-17T10:37:06Z Application of data mining techniques in customer realationship management for an automobile company Tang A.Y.C. Azami N.H. Osman N. 36806985400 54944977900 54938661600 classifiers data mining evaluation Weka Behavioral research Classifiers Customer satisfaction Decision making Information technology Open systems Public relations Sales Automobile companies Customer behavior Customer data Customer relationship management Data mining techniques Data sets Enterprise development evaluation Evaluation results Historical data Open sources Personalized service Weka Data mining This work analyzes well-known DM techniques in Weka workbench, and reports the simulation results of applying four selected DM techniques and classifiers in the open source workbench to the Customer Relationship Management (CRM) problem in an automobile enterprise. It is proposed that data mining techniques to be used in aiding the salesperson and management of the enterprise for effective decision making. This approach was applied to 500 preprocessed records out of 2000 raw data sets for the past 5 years. Simulation results show that the large volume of customer historical data can play a value-added role for enterprise development in a way that the mined data helps them to study customer behavior so that personalized services can be provided. This paper also discusses the evaluation results of the four classifiers used in mining the customer data. � 2011 IEEE. Final 2023-12-29T07:47:27Z 2023-12-29T07:47:27Z 2011 Conference Paper 10.1109/ICIMU.2011.6122754 2-s2.0-84856505477 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84856505477&doi=10.1109%2fICIMU.2011.6122754&partnerID=40&md5=0be198d2baeb88523cecdf4297ecb92b https://irepository.uniten.edu.my/handle/123456789/30405 6122754 Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic classifiers
data mining
evaluation
Weka
Behavioral research
Classifiers
Customer satisfaction
Decision making
Information technology
Open systems
Public relations
Sales
Automobile companies
Customer behavior
Customer data
Customer relationship management
Data mining techniques
Data sets
Enterprise development
evaluation
Evaluation results
Historical data
Open sources
Personalized service
Weka
Data mining
spellingShingle classifiers
data mining
evaluation
Weka
Behavioral research
Classifiers
Customer satisfaction
Decision making
Information technology
Open systems
Public relations
Sales
Automobile companies
Customer behavior
Customer data
Customer relationship management
Data mining techniques
Data sets
Enterprise development
evaluation
Evaluation results
Historical data
Open sources
Personalized service
Weka
Data mining
Tang A.Y.C.
Azami N.H.
Osman N.
Application of data mining techniques in customer realationship management for an automobile company
description This work analyzes well-known DM techniques in Weka workbench, and reports the simulation results of applying four selected DM techniques and classifiers in the open source workbench to the Customer Relationship Management (CRM) problem in an automobile enterprise. It is proposed that data mining techniques to be used in aiding the salesperson and management of the enterprise for effective decision making. This approach was applied to 500 preprocessed records out of 2000 raw data sets for the past 5 years. Simulation results show that the large volume of customer historical data can play a value-added role for enterprise development in a way that the mined data helps them to study customer behavior so that personalized services can be provided. This paper also discusses the evaluation results of the four classifiers used in mining the customer data. � 2011 IEEE.
author2 36806985400
author_facet 36806985400
Tang A.Y.C.
Azami N.H.
Osman N.
format Conference Paper
author Tang A.Y.C.
Azami N.H.
Osman N.
author_sort Tang A.Y.C.
title Application of data mining techniques in customer realationship management for an automobile company
title_short Application of data mining techniques in customer realationship management for an automobile company
title_full Application of data mining techniques in customer realationship management for an automobile company
title_fullStr Application of data mining techniques in customer realationship management for an automobile company
title_full_unstemmed Application of data mining techniques in customer realationship management for an automobile company
title_sort application of data mining techniques in customer realationship management for an automobile company
publishDate 2023
_version_ 1806423481475137536
score 13.214268