电子商务在你的收件箱:产品推荐的规模

Mihajlo Grbovic, Vladan Radosavljevic, Nemanja Djuric, Narayan L. Bhamidipati, Jaikit Savla, Varun Bhagwan, Doug Sharp
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引用次数: 286

摘要

近年来,网络广告变得越来越普遍和有效。向访问者展示的广告为发布数字内容、管理社交网络和运营电子邮件服务的网站和应用程序提供资金。鉴于互联网资源种类繁多,为特定平台确定合适的广告类型已成为取得财务成功的关键。原生广告,即在外观和感觉上与内容相似的广告,在新闻和社交动态中取得了巨大成功。然而,到目前为止,在电子邮件客户端中还没有一个成功的广告模式。在本文中,我们描述了一个系统,利用从电子邮件收据中确定的用户购买历史,向雅虎邮件用户提供高度个性化的产品广告。我们建议使用一种新颖的基于神经语言的算法,专门为提供有效的产品推荐而定制,该算法根据基线进行评估,包括显示流行产品和基于共现预测的产品。我们使用大规模的产品购买数据集进行了严格的线下测试,涵盖了172个电子商务网站超过2900万用户的购买行为。我们对产品推荐形式的广告进行了成功的在线流量测试,我们观察到,与邮件中的其他广告形式相比,广告的点击率稳定提高了9%,转化率也有相应的提高。在测试成功后,该系统于2014年假期投入生产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
E-commerce in Your Inbox: Product Recommendations at Scale
In recent years online advertising has become increasingly ubiquitous and effective. Advertisements shown to visitors fund sites and apps that publish digital content, manage social networks, and operate e-mail services. Given such large variety of internet resources, determining an appropriate type of advertising for a given platform has become critical to financial success. Native advertisements, namely ads that are similar in look and feel to content, have had great success in news and social feeds. However, to date there has not been a winning formula for ads in e-mail clients. In this paper we describe a system that leverages user purchase history determined from e-mail receipts to deliver highly personalized product ads to Yahoo Mail users. We propose to use a novel neural language-based algorithm specifically tailored for delivering effective product recommendations, which was evaluated against baselines that included showing popular products and products predicted based on co-occurrence. We conducted rigorous offline testing using a large-scale product purchase data set, covering purchases of more than 29 million users from 172 e-commerce websites. Ads in the form of product recommendations were successfully tested on online traffic, where we observed a steady 9% lift in click-through rates over other ad formats in mail, as well as comparable lift in conversion rates. Following successful tests, the system was launched into production during the holiday season of 2014.
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