Personalized recommendation systems shape much of user choice online, yet their targeted nature makes separating out the value of recommendation and the underlying goods challenging. We build a discrete choice model that embeds recommendation-induced utility, low-rank heterogeneity, and flexible state dependence and apply the model to viewership data at Netflix. We exploit idiosyncratic variation introduced by the recommendation algorithm to identify and separately value these components as well as to recover model-free diversion ratios that we can use to validate our structural model. We use the model to evaluate counterfactuals that quantify the incremental engagement generated by personalized recommendations. First, we show that replacing the current recommender system with a matrix factorization or popularity-based algorithm would lead to 4% and 12% reduction in engagement, respectively, and decreased consumption diversity. Second, most of the consumption increase from recommendations comes from effective targeting, not mechanical exposure, with the largest gains for mid-popularity goods (as opposed to broadly appealing or very niche goods).
The Value of Personalized Recommendations: Evidence from Netflix
Kevin Zielnicki,Guy Aridor,Aurélien F. Bibaut,Allen Tran,Winston Chou,Nathan Kallus
Published 2025 in Social Science Research Network
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- Publication year
2025
- Venue
Social Science Research Network
- Publication date
2025-11-10
- Fields of study
Computer Science, Economics
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