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Personalized Recommendation Method of E-Commerce Products Based on In-Depth User Interest Portraits

Personalized Recommendation Method of E-Commerce Products Based on In-Depth User Interest Portraits
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Author(s): Jingyi Li (Chongqing City Vocational College, China)and Shaowu Bao (Anhui Agricultural University, China)
Copyright: 2024
Volume: 19
Issue: 1
Pages: 15
Source title: International Journal of Information Technology and Web Engineering (IJITWE)
Editor(s)-in-Chief: Ghazi I. Alkhatib (The Hashemite University, Jordan (retired))
DOI: 10.4018/IJITWE.335123

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Abstract

In dynamic e-commerce environments, researchers strive to understand users' interests and behaviors to enhance personalized product recommendations. Traditional collaborative filtering (CF) algorithms have encountered computational challenges such as similarity errors and user rating habits. This research addresses these issues by emphasizing user profiling techniques. This article proposes an innovative user profile updating technique that explores the key components of user profile (basic information, behavior, and domain knowledge). An enhanced kernel fuzzy mean clustering algorithm constructs a dynamic user portrait based on domain knowledge mapping. This dynamic portrait is combined with e-commerce personalized recommendation to improve the accuracy of inferring user interests, thus facilitating accurate recommendation on the platform. The method proposed in this article greatly improves the overall performance and provides strong support for developing smarter and more personalized e-commerce product recommendation systems.

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