一种模式不适合所有:预测电子商务平台的产品退货

Tanuj Joshi, Animesh Mukherjee, Girish Ippadi
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引用次数: 2

摘要

提供简单、无麻烦的产品退货已经成为电子商务公司的常态。然而,客户的这种灵活性导致各自的电子商务公司遭受重大损失,因为涉及到配送物流,并最终降低了退货产品的转售价值。在本文中,我们考虑了印度一家领先的电子商务公司的数据,并调查了不同生活方式垂直领域的产品退货问题。从我们的测量中得出的一个惊人的观察结果是,大多数退货发生在服装/服装上,而客户提出退货的主要原因是“尺寸/合身”问题。在这里,我们根据过去的购买/退货数据开发了一个模型,该模型给出了用户、产品的品牌和尺寸,可以预测用户最终是否会退货。我们的模型在方法上的新颖之处在于,它结合了网络科学和机器学习的概念来进行预测。在三个不同大小的主要垂直领域,我们获得了比naïve基线提高10%-25%的总体f分数,其中集群是使用简单的随机漫步重新启动获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One Size Does Not Fit All: Predicting Product Returns in E-Commerce Platforms
Providing easy and hassle-free product returns have become a norm for e-commerce companies. However, this flexibility on the part of the customer causes the respective e-commerce companies to incur heavy losses because of the delivery logistics involved and the eventual lower resale value of the product returned. In this paper, we consider data from one of the leading Indian e-commerce companies and investigate the problem of product returns across different lifestyle verticals. One of the striking observations from our measurements is that most of the returns take place for apparels/garments and the major reason for the return as cited by the customers is the “size/fit” issue. Here we develop, based on past purchase/return data, a model that given a user, a brand and a size of the product can predict whether the user is going to eventually return the product. The methodological novelty of our model is that it combines concepts from network science and machine learning to make the predictions. Across three different major verticals of various sizes, we obtain overall F-score improvements between 10%–25% over a naïve baseline where the clusters are obtained using simple random walk with restarts.
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