Authors
Edward C Malthouse, Yasaman Kamyab Hessary, Khadija Ali Vakeel, Robin Burke, Morana Fudurić
Publication date
2019/8/8
Journal
Journal of Advertising
Volume
48
Issue
4
Pages
366-379
Publisher
Routledge
Description
Retailing and media platforms recommend two types of items to their users: sponsored items that generate ad revenue and nonsponsored ones that do not. The platform selects sponsored items to maximize ad revenue, often through programmatic auctions, and nonsponsored items to maximize user utility with a recommender system (RS). We develop a binary integer programming model to allocate sponsored recommendations considering dual objectives of maximizing ad revenue and user utility. We propose an algorithm to solve it in a computationally efficient way. Our method is a form of postfiltering to a traditional RS, making it widely applicable in two-sided markets. We apply the algorithm to data from an online grocery retailer and show that user utility for the recommended items can be improved while reducing ad revenue by a small amount. This multiobjective approach unifies programmatic advertising and …
Total citations
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