Evaluating discounts as a dimension of customer behavior analysis |
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Authors: | Shohre Haghighatnia Saeedeh Rajaee Harandi |
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Affiliation: | 1. Information Technology Engineering, Department of Computer and Information Technology, Islamic Azad University of Qazvin, Qazvin, Iran;2. Information Technology Management, Department of Social Science and Economics, Alzahra University, Tehran, Iran |
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Abstract: | Today, increased competition between organizations has led them to seek a better understanding of customer behavior through identifying valuable customers. Customers’ expectations about the price and quality of products and services play an important role in their selection process. In online businesses, competition and price differences between suppliers is high, so discounts will attract different customers. As a result, discounts and the frequency and amount of purchases can lead to better understanding of customer behavior. Customer segmentation and analysis is essential for identifying groups of customers. Hence, this study uses a model based on RFM called RdFdMd, in which d is the level of discount used to analyze customer purchase behavior and the importance of discounts on customers’ purchasing behavior and organizational profitability. The CRISP-DM and k-mean algorithm were used for clustering. The results indicate that using the RdFdMd model achieves better customer clustering and valuation, and discounts were identified as an important criterion for customer purchases. |
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Keywords: | Clustering data mining customer relationship management discount RFM model |
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