E-commerce in Your Inbox: Product Recommendations at Scale
Mihajlo Grbovic, Vladan Radosavljevic, Nemanja Djuric, Narayan, Bhamidipati, Jaikit Savla, Varun Bhagwan, Doug Sharp

TL;DR
This paper presents a neural language-based system for delivering personalized product recommendations via email, leveraging purchase history to significantly improve click-through and conversion rates in Yahoo Mail.
Contribution
It introduces a novel neural language algorithm for personalized product ads in email, validated through large-scale offline testing and successful online deployment.
Findings
9% increase in click-through rates
Comparable lift in conversion rates
Effective personalization using purchase history
Abstract
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…
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Taxonomy
TopicsRecommender Systems and Techniques · Web Data Mining and Analysis · Topic Modeling
