Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty

The main aim of this study was introducing a comprehensive model of bank customers᾽ loyalty evaluation based on the assessment and comparison of different clustering methods᾽ performance. This study also pursues the following specific objectives: a) using different clustering methods and comparing t...

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Main Authors: H. Alizadeh, B. Minaei Bidgoli
Format: Article
Language:English
Published: D. G. Pylarinos 2016-12-01
Series:Engineering, Technology & Applied Science Research
Subjects:
Online Access:http://etasr.com/index.php/ETASR/article/download/741/403
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spelling doaj-c0c46009b97f423d9ebc100bdd9d22d12020-12-02T00:10:41ZengD. G. PylarinosEngineering, Technology & Applied Science Research2241-44871792-80362016-12-016612351240Introducing A Hybrid Data Mining Model to Evaluate Customer LoyaltyH. Alizadeh0B. Minaei Bidgoli1Department of Computer Engineering, Buinzahra Branch, Islamic Azad University, Buinzahra, IranSchool of Computer Engineering, Iran University of Science & Technology, Tehran, IranThe main aim of this study was introducing a comprehensive model of bank customers᾽ loyalty evaluation based on the assessment and comparison of different clustering methods᾽ performance. This study also pursues the following specific objectives: a) using different clustering methods and comparing them for customer classification, b) finding the effective variables in determining the customer loyalty, and c) using different collective classification methods to increase the modeling accuracy and comparing the results with the basic methods. Since loyal customers generate more profit, this study aims at introducing a two-step model for classification of customers and their loyalty. For this purpose, various methods of clustering such as K-medoids, X-means and K-means were used, the last of which outperformed the other two through comparing with Davis-Bouldin index. Customers were clustered by using K-means and members of these four clusters were analyzed and labeled. Then, a predictive model was run based on demographic variables of customers using various classification methods such as DT (Decision Tree), ANN (Artificial Neural Networks), NB (Naive Bayes), KNN (K-Nearest Neighbors) and SVM (Support Vector Machine), as well as their bagging and boosting to predict the class of loyal customers. The results showed that the bagging-ANN was the most accurate method in predicting loyal customers. This two-stage model can be used in banks and financial institutions with similar data to identify the type of future customers.http://etasr.com/index.php/ETASR/article/download/741/403Loyaltydata miningclusteringclassificationevaluation
collection DOAJ
language English
format Article
sources DOAJ
author H. Alizadeh
B. Minaei Bidgoli
spellingShingle H. Alizadeh
B. Minaei Bidgoli
Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
Engineering, Technology & Applied Science Research
Loyalty
data mining
clustering
classification
evaluation
author_facet H. Alizadeh
B. Minaei Bidgoli
author_sort H. Alizadeh
title Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
title_short Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
title_full Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
title_fullStr Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
title_full_unstemmed Introducing A Hybrid Data Mining Model to Evaluate Customer Loyalty
title_sort introducing a hybrid data mining model to evaluate customer loyalty
publisher D. G. Pylarinos
series Engineering, Technology & Applied Science Research
issn 2241-4487
1792-8036
publishDate 2016-12-01
description The main aim of this study was introducing a comprehensive model of bank customers᾽ loyalty evaluation based on the assessment and comparison of different clustering methods᾽ performance. This study also pursues the following specific objectives: a) using different clustering methods and comparing them for customer classification, b) finding the effective variables in determining the customer loyalty, and c) using different collective classification methods to increase the modeling accuracy and comparing the results with the basic methods. Since loyal customers generate more profit, this study aims at introducing a two-step model for classification of customers and their loyalty. For this purpose, various methods of clustering such as K-medoids, X-means and K-means were used, the last of which outperformed the other two through comparing with Davis-Bouldin index. Customers were clustered by using K-means and members of these four clusters were analyzed and labeled. Then, a predictive model was run based on demographic variables of customers using various classification methods such as DT (Decision Tree), ANN (Artificial Neural Networks), NB (Naive Bayes), KNN (K-Nearest Neighbors) and SVM (Support Vector Machine), as well as their bagging and boosting to predict the class of loyal customers. The results showed that the bagging-ANN was the most accurate method in predicting loyal customers. This two-stage model can be used in banks and financial institutions with similar data to identify the type of future customers.
topic Loyalty
data mining
clustering
classification
evaluation
url http://etasr.com/index.php/ETASR/article/download/741/403
work_keys_str_mv AT halizadeh introducingahybriddataminingmodeltoevaluatecustomerloyalty
AT bminaeibidgoli introducingahybriddataminingmodeltoevaluatecustomerloyalty
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