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Growing Science » Decision Science Letters » A novel model for product bundling and direct marketing in e-commerce based on market segmentation

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Decision Science Letters

ISSN 1929-5812 (Online) - ISSN 1929-5804 (Print)
Quarterly Publication
Volume 7 Issue 1 pp. 39-54 , 2018

A novel model for product bundling and direct marketing in e-commerce based on market segmentation Pages 39-54 Right click to download the paper Download PDF

Authors: Arash Beheshtian-Ardakani, Mohammad Fathian, Mohammadreza Gholamian

DOI: 10.5267/j.dsl.2017.4.005

Keywords: Product bundling, Direct marketing, Market segmentation, Customer loyalty, Personalization, Electronic commerce

Abstract: Nowadays, companies offer product bundles with special discounts in order to sell more products. However, it is important to note that customers show different levels of loyalties to companies, and each segment of the market has unique features, which influences the customers’ buying patterns. The primary purpose of this paper is to propose a novel model for product bundling in e-commerce websites by using market segmentation variables and customer loyalty analysis. RFM model is employed to calculate customer loyalty. Subsequently, the customers are grouped based on their loyalty levels. Each group is then divided into different segments based on market segmentation variables. The product bundles are determined for each market segment via clustering algorithms. Apriori algorithm is also used to determine the association rules for each product bundle. Classification models are applied in order to determine which product bundle should be recommended to each customer. The results demonstrate that the silhouette coefficient, support, confidence, and accuracy values are higher when both customer loyalty level and market segmentation variables are used in product bundling. Accordingly, the proposed model increases the chance of success in direct marketing and recommending product bundles to customers.

How to cite this paper
Beheshtian-Ardakani, A., Fathian, M & Gholamian, M. (2018). A novel model for product bundling and direct marketing in e-commerce based on market segmentation.Decision Science Letters , 7(1), 39-54.

Refrences
Arora, N., Dreze, X., Ghose, A., Hess, J. D., Iyengar, R., Jing, B., … Zhang, Z. J. (2008). Putting one-to-one marketing to work: Personalization, customization, and choice. Marketing Letters, 19(3), 305–321.
Beladev, M., Rokach, L., & Shapira, B. (2016). Recommender systems for product bundling. Knowledge-Based Systems, 111, 193–206.
Bloom, J. Z. (2005). Market segmentation. A neural network application. Annals of Tourism Research, 32(1), 93–111.
Cataldo, A., & Ferrer, J. (2017). Optimal pricing and composition of multiple bundles: A two-step approach. European Journal of Operational Research, 259(2), 766–777.
Chen, D., Sain, S. L., & Guo, K. (2012). Data mining for the online retail industry: A case study of RFM model-based customer segmentation using data mining. Journal of Database Marketing & Customer Strategy Management, 19(3), 197–208.
Dutta, S., Bhattacharya, S., & Guin, K. K. (2015). Data Mining in Market Segmentation: A Literature Review and Suggestions. In K. N. Das, K. Deep, M. Pant, J. C. Bansal, & A. Nagar (Eds.), Proceedings of Fourth International Conference on Soft Computing for Problem Solving, Advances in Intelligent Systems and Computing, Volume 335 (pp. 87–98). New Delhi: Springer India.
Han, J., Pei, J., & Kamber, M. (2011). Data Mining: Concepts and Techniques (3rd ed.). Waltham, MA: Elsevier Science.
Hsu, F. M., Lu, L. P., & Lin, C. M. (2012). Segmenting customers by transaction data with concept hierarchy. Expert Systems with Applications, 39(6), 6221–6228.
Huang, J. J., Tzeng, G. H., & Ong, C. S. (2007). Marketing segmentation using support vector clustering. Expert Systems with Applications, 32(2), 313–317.
Kantardzic, M. (2011). Data Mining: Concepts, Models, Methods, and Algorithms (2nd ed.). Hoboken, NJ: John Wiley & Sons.
Karimi-Majd, A.-M., & Fathian, M. (2017). Extracting new ideas from the behavior of social network users. Decision Science Letters, 6(3), 207–220.
Kotler, P., & Armstrong, G. (2014). Principles of Marketing (15th ed.). Harlow, England: Pearson Education.
Kuo, R. J., An, Y. L., Wang, H. S., & Chung, W. J. (2006). Integration of self-organizing feature maps neural network and genetic K-means algorithm for market segmentation. Expert Systems with Applications, 30(2), 313–324.
Kuo, R. J., Ho, L. M., & Hu, C. M. (2002). Integration of Self-Organizing Feature Map and K-Means Algorithm for Market Segmentation. Computers & Operations Research, 29(11), 1475–1493.
Larose, D. T., & Larose, C. D. (2015). Data Mining and Predictive Analytics (2nd ed.). Hoboken, NJ: John Wiley & Sons.
Lee, J. H., & Park, S. C. (2005). Intelligent profitable customers segmentation system based on business intelligence tools. Expert Systems with Applications, 29(1), 145–152.
Liao, S. H., Chen, Y. J., & Hsieh, H. H. (2011). Mining customer knowledge for direct selling and marketing. Expert Systems with Applications, 38(5), 6059–6069.
Liao, S. H., Chen, Y. J., & Lin, Y. T. (2011). Mining customer knowledge to implement online shopping and home delivery for hypermarkets. Expert Systems with Applications, 38(4), 3982–3991.
Linoff, G. S., & Berry, M. J. A. (2011). Data Mining Techniques: For Marketing, Sales, and Customer Relationship Management (3rd ed.). Indianapolis, IN: John Wiley & Sons.
Lu, T.-C., & Wu, K.-Y. (2009). A transaction pattern analysis system based on neural network. Expert Systems with Applications, 36(3), 6091–6099.
Miguéis, V. L., Camanho, A. S., & Falcão e Cunha, J. (2012). Customer data mining for lifestyle segmentation. Expert Systems with Applications, 39(10), 9359–9366.
Sarvari, P. A., Ustundag, A., & Takci, H. (2016). Performance evaluation of different customer segmentation approaches based on RFM and demographics analysis. Kybernetes, 45(7), 1129–1157.
Shim, B., Choi, K., & Suh, Y. (2012). CRM strategies for a small-sized online shopping mall based on association rules and sequential patterns. Expert Systems with Applications, 39(9), 7736–7742.
SPSS Inc. (2001). The SPSS TwoStep Cluster Component: A scalable component enabling more efficient customer segmentation [White paper-technical report].
Stremersch, S., & Tellis, G. J. (2002). Strategic Bundling of Products and Prices: A New Synthesis for Marketing. Journal of Marketing, 66(1), 55–72.
Tan, P.-N., Steinbach, M., & Kumar, V. (2005). Introduction to Data Mining (1st ed.). Boston, MA: Pearson Education.
Tsai, C. Y., & Chiu, C. C. (2004). A purchase-based market segmentation methodology. Expert Systems with Applications, 27(2), 265–276.
Turban, E., King, D., Lee, J. K., Liang, T.-P., & Turban, D. C. (2015). Electronic Commerce: A Managerial and Social Perspective (8th ed.). Cham, Switzerland: Springer International Publishing.
Yang, T. C., & Lai, H. (2006). Comparison of product bundling strategies on different online shopping behaviors. Electronic Commerce Research and Applications, 5(4), 295–304.
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Journal: Decision Science Letters | Year: 2018 | Volume: 7 | Issue: 1 | Views: 8488 | Reviews: 0

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