Recommender systems are an essential component of e-commerce marketplaces, helping consumers navigate massive amounts of inventory and find what they need or love. In this paper, we present an approach for generating personalized item recommendations in an e-commerce marketplace by learning to embed items and users in the same vector space. In order to alleviate the considerable cold-start problem present in large marketplaces, item and user embeddings are computed using content features and multi-modal onsite user activity respectively. Data ablation is incorporated into the offline model training process to improve the robustness of the production system. In offline evaluation using a dataset collected from eBay traffic, our approach was able to improve the Recall@k metric over the Recently-Viewed-Item (RVI) method. This approach to generating personalized recommendations has been launched to serve production traffic, and the corresponding scalable engineering architecture is also presented. Initial A/B test results show that compared to the current personalized recommendation module in production, the proposed method increases the surface rate by $\sim$6\% to generate recommendations for 90\% of listing page impressions.
翻译:建议系统是电子商务市场的基本组成部分,帮助消费者浏览大量库存,找到他们需要或爱的东西。在本文中,我们提出一种方法,通过学习将项目和用户嵌入同一矢量空间,在电子商务市场中提出个性化项目建议;为了缓解大型市场中存在的大量冷启动问题,利用内容特点和多式现场用户活动分别计算项目和用户嵌入;数据断层纳入离线示范培训进程,以提高生产系统的稳健性。在利用从eBay交通中收集的数据集进行离线评价时,我们的方法得以改进了对最新视频集成项目(RVI)方法的回调@k衡量标准。这种产生个性化建议的方法已经启动,为生产流量服务,并介绍了相应的可缩放工程结构。A/B初步测试结果表明,与目前的生产中个性化建议模块相比,拟议方法使表面增价6美元,以产生关于列出页印90_____的建议。