Author/Authors :
نكويي، آرزو نويسنده دانشگاه خواجه نصير الدين طوسي Nekooei, Arezoo , طارخ، محمد جعفر نويسنده دانشگاه خواجه نصير الدين طوسي Tarokh, Mohammad Jafar
Abstract :
Customer lifetime value (CLV) as a quantifiable parameter plays an important role in customer clustering.
Clustering based on CLV helps organizations to form distinct customer groups, reveal buying patterns, and create longterm
relationships with their customers. Our research aims at the synthesis of a CLV model and a clustering algorithm
in a new comprehensive framework. First, a model for calculation of CLV is suggested, which is called Group LRFM
or GLRFM briefly. In this model, four parameters, Length, Recency, Frequency, and Monetary, are determined
according to the products/services used by customers. Then, a novel framework based upon the model is presented in
eight steps for customer clustering. In traditional methods, the customers of valuable cluster are treated the same. But
in proposed framework, company can design different and proper strategies for each cluster based on the use of
products/services. The experimental results in banking industry verify that proposed approach allows an accurate and
efficient cluster analysis; it provides appropriate information to create clear sales and marketing policies for three
identified segments.