Hybrid-based Recommender System for Online Shopping: A Review

Ying Fei Lim, S. Haw, Kok-Why Ng, E. Anaam
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Abstract

In the era of the digital revolution, online shopping has developed into a remarkably simple and economical option for consumers to make purchases securely and conveniently from their homes. In order for the online merchant to optimize their profit, the online shopping platform must always display a list of potential products that customers may purchase. The recommender system kicks in at this point to assist in finding products that customers would like and recommend a list of product recommendations that match the customer's preferences. This paper reviews the recommender system technology in detail by reviewing the classification technique. Other than that, the related works will be reviewed to understand how each technique works, the strengths and limitations, the datasets and evaluation metrics employed.
基于混合的在线购物推荐系统综述
在数字革命时代,网上购物已经发展成为一种非常简单和经济的选择,消费者可以在家中安全方便地进行购物。为了使在线商家优化利润,在线购物平台必须始终显示客户可能购买的潜在产品列表。此时,推荐系统开始帮助查找客户喜欢的产品,并推荐符合客户偏好的产品推荐列表。本文通过对分类技术的回顾,对推荐系统技术进行了详细的综述。除此之外,还将回顾相关工作,以了解每种技术的工作原理,优势和局限性,所使用的数据集和评估指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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