Macro-optimization of email recommendation response rates harnessing individual activity levels and group affinity trends
Mohammed Korayem, Khalifeh Aljadda, and Trey Grainger

TL;DR
This paper introduces a macro-optimization approach for email recommendation systems that uses individual activity and group trends to maximize response rates while minimizing email volume, demonstrated in a real-world job recommendation context.
Contribution
The paper presents a novel meta-recommendation system that optimizes email send strategies by leveraging individual and group behavioral data to improve response efficiency.
Findings
50% increase in total conversions
72% reduction in emails sent
Effective application in a real-world system
Abstract
Recommendation emails are among the best ways to re-engage with customers after they have left a website. While on-site recommendation systems focus on finding the most relevant items for a user at the moment (right item), email recommendations add two critical additional dimensions: who to send recommendations to (right person) and when to send them (right time). It is critical that a recommendation email system not send too many emails to too many users in too short of a time-window, as users may unsubscribe from future emails or become desensitized and ignore future emails if they receive too many. Also, email service providers may mark such emails as spam if too many of their users are contacted in a short time-window. Optimizing email recommendation systems such that they can yield a maximum response rate for a minimum number of email sends is thus critical for the long-term…
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