Etsy is a global marketplace where people across the world connect to make, buy and sell unique goods. Sellers at Etsy can promote their product listings via advertising campaigns similar to traditional sponsored search ads. Click-Through Rate (CTR) prediction is an integral part of online search advertising systems where it is utilized as an input to auctions which determine the final ranking of promoted listings to a particular user for each query. In this paper, we provide a holistic view of Etsy's promoted listings' CTR prediction system and propose an ensemble learning approach which is based on historical or behavioral signals for older listings as well as content-based features for new listings. We obtain representations from texts and images by utilizing state-of-the-art deep learning techniques and employ multimodal learning to combine these different signals. We compare the system to non-trivial baselines on a large-scale real world dataset from Etsy, demonstrating the effectiveness of the model and strong correlations between offline experiments and online performance. The paper is also the first technical overview to this kind of product in e-commerce context.
翻译:Etsy是一个全球市场,世界各地的人可以在这个市场上制造、购买和销售独特的货物。Etsy的卖主可以通过类似于传统赞助的搜索广告的广告宣传自己的产品清单。CTR率预测是在线搜索广告系统的一个组成部分,在网上搜索广告系统中,它被作为一种投入用于拍卖,拍卖决定了促销名单的最后排位,每个查询的用户都是特定的用户。在本文中,我们提供了对Etsy的促销列表CTR预测系统的全面看法,并提出了一个共同学习方法,该方法基于对老名单的历史或行为信号以及新名单的内容特征。我们通过利用最先进的深层次学习技术从文本和图像中获取陈述,并利用多式联运学习将这些不同信号结合起来。我们将该系统与Etsy大规模真实世界数据集的非三维基线进行比较,展示模型的有效性以及离线实验与在线表现之间的密切关联。本文也是电子商务中这类产品的第一个技术概览。