Title of article :
A RFMV Model and Customer Segmentation Based on Variety of Products
Author/Authors :
Qadaki Moghaddam ، Saman - Qazvin Azad University , Abdolvand ، Neda - Alzahra University , Rajaee Harandi ، Saeedeh - Alzahra University
Pages :
7
From page :
155
To page :
161
Abstract :
Today, increased competition between organizations has led them to seek a better understanding of customer behavior through innovative ways of storing and analyzing their information. Moreover, the emergence of new computing technologies has brought about major changes in the ability of organizations to collect, store and analyze macrodata. Therefore, over thousands of data can be stored for each customer. Hence, customer satisfaction is one of the most important organizational goals. Since all customers do not represent the same profitability to an organization, understanding and identifying the valuable customers has become the most important organizational challenge. Thus, understanding customers’ behavioral variables and categorizing customers based on these characteristics could provide better insight that will help business owners and industries to adopt appropriate marketing strategies such as upselling and crossselling. The use of these strategies is based on a fundamental variable, variety of products. Diversity in individual consumption may lead to increased demand for variety of products; therefore, variety of products can be used, along with other behavioral variables, to better understand and categorize customers’ behavior. Given the importance of the variety of products as one of the main parameters of assessing customer behavior, studying this factor in the field of businesstobusiness (B2B) communication represents a vital new approach. Hence, this study aims to cluster customers based on a developed RFM model, namely RFMV, by adding a variable of variety of products (V). Therefore, CRISPDM and Kmeans algorithm was used for clustering. The results of the study indicated that the variable V, variety of products, is effective in calculating customers’ value. Moreover, the results indicated the better customers clustering and valuation by using the RFMV model. As a whole, the results of modeling indicate that the variety of products along with other behavioral variables provide more accurate clustering than RFM model.
Keywords :
Clustering , Data Mining , Customer Relationship Management , Product Variety , RFM Model ,
Journal title :
Journal of Information Systems and Telecommunication
Serial Year :
2017
Journal title :
Journal of Information Systems and Telecommunication
Record number :
2451153
Link To Document :
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