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AI and Personalization

aCornell Tech, USA
bUniversity of Washington, USA

Artificial Intelligence in Marketing

ISBN: 978-1-80262-876-0, eISBN: 978-1-80262-875-3

Publication date: 13 March 2023

Abstract

This chapter reviews the recent developments at the intersection of personalization and AI in marketing and related fields. We provide a formal definition of personalized policy and review the methodological approaches available for personalization. We discuss scalability, generalizability, and counterfactual validity issues and briefly touch upon advanced methods for online/interactive/dynamic settings. We then summarize the three evaluation approaches for static policies – the Direct method, the Inverse Propensity Score (IPS) estimator, and the Doubly Robust (DR) method. Next, we present a summary of the evaluation approaches for special cases such as continuous actions and dynamic settings. We then summarize the findings on the returns to personalization across various domains, including content recommendation, advertising, and promotions. Next, we discuss the work on the intersection between personalization and welfare. We focus on four of these welfare notions that have been studied in the literature: (1) search costs, (2) privacy, (3) fairness, and (4) polarization. We conclude with a discussion of the remaining challenges and some directions for future research.

Keywords

Citation

Rafieian, O. and Yoganarasimhan, H. (2023), "AI and Personalization", Sudhir, K. and Toubia, O. (Ed.) Artificial Intelligence in Marketing (Review of Marketing Research, Vol. 20), Emerald Publishing Limited, Leeds, pp. 77-102. https://doi.org/10.1108/S1548-643520230000020004

Publisher

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Emerald Publishing Limited

Copyright © 2023 Omid Rafieian and Hema Yoganarasimhan. Published under exclusive licence by Emerald Publishing Limited