Clustering e-Banking Customer using Data Mining and Marketing Segmentation

Main Article Content

Waminee Niyagas
Anongnart Srivihok
Sukumal Kitisin

Abstract

In Thailand e-banking has been offered by various financial institutes including Thai commercial banks and government banks. However, e-banking in Thailand is not widely used and accepted as in other countries. Accordingly, the study of e-banking is scantly due to the limitation of data confidentiality. This study uses data mining techniques to analyse historical data of e-banking usages from a commercial bank in Thailand. These techniques including SOMS, K-Mean algorithm and marketing techniques-RFM analysis are used to segment customers into groups according to their personal profiles and e-banking usages. Then Apriori algorithm is applied to detect the relationships within features of e-banking services. Typically, results of this study are presented and can be used to generate new service packages which are customised to each segment of e-banking users.

Article Details

How to Cite
[1]
W. Niyagas, A. Srivihok, and S. Kitisin, “Clustering e-Banking Customer using Data Mining and Marketing Segmentation”, ECTI-CIT Transactions, vol. 2, no. 1, pp. 63–69, Mar. 2016.
Section
Artificial Intelligence and Machine Learning (AI)