Title of article :
Developing a model for measuring customer’s loyalty and value with RFM technique and clustering algorithms
Author/Authors :
qiasi، Razieh نويسنده , , , baqeri-Dehnavi، Malihe نويسنده , , Minaei-Bidgoli، Behrooz نويسنده , , Amooee، Golriz نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In today’s competitive world, moving toward customer-oriented markets with
increased access to customer’s transaction data, identifying loyal customers and
estimating their lifetime value makes crucial. Since knowledge of customer value
provides targeted data for personalized markets, implementing customer relationship
management strategy helps organizations to identify and segment customers and create
long-term relationships with them, and as a result, they can maximize customer lifetime
value. Data mining techniques are known as a powerful tool for this purpose.
The purpose of this paper is customer segmentation using RFM technique and
clustering algorithms based on customer’s value, to specify loyal and profitable
customers. We also used classification algorithms to obtain useful rules for
implementing effective customer relationship management. This paper used a
combination of behavioral and demographical characteristics of individuals to estimate
loyalty. Finally, the proposed model has been implemented on a grocery store’s data,
during 1997 to 1998 in Singapore, to measure customer’s loyalty during these two
years.
Journal title :
The Journal of Mathematics and Computer Science(JMCS)
Journal title :
The Journal of Mathematics and Computer Science(JMCS)