Title of article :
Classification of Bank Customers by Data Mining: a Case Study of Mellat Bank branches in Shiraz
Author/Authors :
Farid ، Dariush Faculty of Economics, Management and Accounting - University of Yazd , Sadeghi ، Hojjatollah Faculty of Economics, Management and Accounting - University of Yazd , Hajigol ، Elahe University of Yazd , Zarmehr Parirooy ، Nadiya Yazd University
From page :
534
To page :
543
Abstract :
This research predicts through studying significant factors in customer relationship management and applying data mining in bank. Financial institutions and other firms in competitive market need to follow proper understanding of customer behavior. Customers’ data are analyzed to identify specific opportunities and investment, to classify and predict the behaviors; further, data are eventually used for decision-making. Therefore, data mining as knowledge exploring (discovery) approach plays a significant role through a variety of algorithms. This study classifies bank customers by using decision tree algorithm. Three decision tree models including ID3, C4.5, and CART were applied for classifying and finally for prediction. Results of simple sampling method and k-fold cross validation show that forecast accuracy of C4.5 decision tree using simple sampling was higher than other models. Thus, predicting customers’ behavior through C4.5 decision tree was considered the ideal prediction for bank.
Keywords :
Validation , data mining , decision tree , customer relationship management
Journal title :
International Journal of Management,Accounting and Economics(IJMAE)
Journal title :
International Journal of Management,Accounting and Economics(IJMAE)
Record number :
2592820
Link To Document :
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