An Empirical Study on Personalized Product Recommendation Based on Cross-Border E-Commerce Customer Data Analysis

Wanwan Li, Ying Cai, Mohd Hizam Hanafiah, Zhenwei Liao
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Abstract

Thanks to the rapid growth of cross-border e-commerce platforms, numerous cross-border items are now available to customers. Several serious issues with cross-border e-commerce platforms related to item promotion and consumer product screening have arisen. Particular importance should be placed on studying and implementing personalized recommendation systems based on international e-commerce. In light of the quick expansion of commodities, when making individualized suggestions, traditional recommendation algorithms have had to deal with issues such as scant data, a chilly start to the market, and trouble identifying user preferences. To automatically mine the implicit and latent relationships between users and objects in recommendation systems, this study employs deep learning with nonlinear learning capabilities, which resolves the challenges of user interest mining. The weaknesses of the existing global recommendation research are emphasized, the study of conventional recommendation algorithms mixed with deep learning technology is deep factorization machine (DeepFM) and neural matrix factorization (NeuMF) models. Both models excel in recommending implicit feedback data. The DeepFM model yields the lowest loss function values, while the NeuMF model outperforms the competing models in terms of HR@20 (a commonly used indicator to measure the recall rate) and loss functions. In summary, this research addresses critical issues in cross-border e-commerce by developing personalized recommendation systems and integrating deep learning with traditional recommendation algorithms to enhance global recommendations.
基于跨境电子商务客户数据分析的个性化产品推荐实证研究
由于跨境电子商务平台的快速发展,现在消费者可以购买到众多跨境商品。跨境电子商务平台在商品促销和消费者产品筛选方面出现了一些严重问题。研究和实施基于国际电子商务的个性化推荐系统尤为重要。鉴于商品的快速扩张,传统的推荐算法在进行个性化推荐时,不得不面对数据匮乏、市场冷启动、用户偏好识别困难等问题。为了自动挖掘推荐系统中用户与对象之间的隐含和潜在关系,本研究采用了具有非线性学习能力的深度学习,解决了用户兴趣挖掘的难题。强调了现有全局推荐研究的弱点,研究了传统推荐算法与深度学习技术的混合,即深度因式分解机(DeepFM)和神经矩阵因式分解(NeuMF)模型。这两种模型在推荐隐式反馈数据方面都很出色。DeepFM 模型产生的损失函数值最低,而 NeuMF 模型在 HR@20(衡量召回率的常用指标)和损失函数方面优于其他竞争模型。总之,本研究通过开发个性化推荐系统,并将深度学习与传统推荐算法相结合以增强全局推荐,解决了跨境电子商务中的关键问题。
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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