Opportunity model for e-commerce recommendation: right product; right time

Jian Wang, Yi Zhang
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引用次数: 164

Abstract

Most of existing e-commerce recommender systems aim to recommend the right product to a user, based on whether the user is likely to purchase or like a product. On the other hand, the effectiveness of recommendations also depends on the time of the recommendation. Let us take a user who just purchased a laptop as an example. She may purchase a replacement battery in 2 years (assuming that the laptop's original battery often fails to work around that time) and purchase a new laptop in another 2 years. In this case, it is not a good idea to recommend a new laptop or a replacement battery right after the user purchased the new laptop. It could hurt the user's satisfaction of the recommender system if she receives a potentially right product recommendation at the wrong time. We argue that a system should not only recommend the most relevant item, but also recommend at the right time. This paper studies the new problem: how to recommend the right product at the right time? We adapt the proportional hazards modeling approach in survival analysis to the recommendation research field and propose a new opportunity model to explicitly incorporate time in an e-commerce recommender system. The new model estimates the joint probability of a user making a follow-up purchase of a particular product at a particular time. This joint purchase probability can be leveraged by recommender systems in various scenarios, including the zero-query pull-based recommendation scenario (e.g. recommendation on an e-commerce web site) and a proactive push-based promotion scenario (e.g. email or text message based marketing). We evaluate the opportunity modeling approach with multiple metrics. Experimental results on a data collected by a real-world e-commerce website(shop.com) show that it can predict a user's follow-up purchase behavior at a particular time with descent accuracy. In addition, the opportunity model significantly improves the conversion rate in pull-based systems and the user satisfaction/utility in push-based systems.
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电商推荐的机会模型:合适的产品正确的时间
大多数现有的电子商务推荐系统的目标是根据用户是否可能购买或喜欢某种产品,向用户推荐合适的产品。另一方面,推荐的有效性也取决于推荐的时间。让我们以一个刚刚购买了笔记本电脑的用户为例。她可能会在两年内购买更换电池(假设笔记本电脑的原始电池经常无法正常工作),并在两年内购买新笔记本电脑。在这种情况下,在用户购买新笔记本电脑后立即建议更换新笔记本电脑或更换电池并不是一个好主意。如果用户在错误的时间收到了可能正确的产品推荐,可能会影响用户对推荐系统的满意度。我们认为,系统不仅应该推荐最相关的项目,而且应该在正确的时间进行推荐。本文研究的新问题是:如何在合适的时间推荐合适的产品?本文将生存分析中的比例风险建模方法应用于推荐研究领域,提出了一种新的机会模型来明确地将时间纳入电子商务推荐系统。新模型估计用户在特定时间购买特定产品的联合概率。推荐系统可以在各种场景中利用这种联合购买概率,包括基于零查询的拉式推荐场景(例如电子商务网站的推荐)和基于主动推送的推广场景(例如基于电子邮件或短信的营销)。我们用多个指标来评估机会建模方法。在实际电子商务网站(shop.com)收集的数据上进行的实验结果表明,该方法可以准确预测用户在特定时间的后续购买行为。此外,机会模型显著提高了基于拉的系统的转化率和基于推的系统的用户满意度/效用。
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