| Article ID: | iaor20052225 |
| Country: | South Korea |
| Volume: | 21 |
| Issue: | 3 |
| Start Page Number: | 55 |
| End Page Number: | 69 |
| Publication Date: | Nov 2004 |
| Journal: | Korean Management Science Review |
| Authors: | Ha Sung Ho, Baek Kyung Hoon |
| Keywords: | behaviour |
This study analyzes customer buying-behavior patterns in a department store as time goes on, and predicts moving patterns of its customers. Through them, it suggests in this paper short-term and long-term marketing promotion strategies. RFM techniques are utilized for customer segmentation. Customers are clustered by using the Kohonen's Self Organizing Map as a method of data mining techniques. Then C5.0, a decision tree analysis technique, is used to predict moving patterns of customers. Using real world data, this study evaluates the prediction accuracy of predictive models.