An Intelligent Product Recommendation Model to Reflect the Recent Purchasing Patterns of Customers

Mobile Networks and Applications - Tập 24 - Trang 163-170 - 2018
Haein Kim1, Geunho Yang1, Hosang Jung2, Sang Ho Lee3, Jae Joon Ahn1
1Department of Information & Statistics, Yonsei University, Wonju, South Korea
2Asia Pacific School of Logistics, Inha University, Incheon, South Korea
3Department of Information Technology Management, Sunmoon University, Asan, South Korea

Tóm tắt

This study suggests a new product recommendation model to reflect the recent purchasing patterns of customers. There are many methods to measure the similarity between customers or products using one-way collaborative filtering. However, few studies have calculated the similarity of using both customer information and product information. Therefore, in this study, affinity variables that combine customer data with product data are created through a confusion matrix. Various derived variables are also generated to enhance the forecasting performance in enormous analysis data. In this study, various data mining classifiers such as the decision tree, neural network, support vector machine, random forest, and rotation forest are applied, and a sliding-window scheme is considered to construct the recommendation model.

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