Reconciling the Accuracy-Diversity Trade-off in Recommendations
Author(s)
Peng, Kenny; Raghavan, Manish; Pierson, Emma; Kleinberg, Jon; Garg, Nikhil
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When making recommendations, there is an apparent trade-off between the goals of accuracy (to recommend items a user is most likely to want) and diversity (to recommend items representing a range of categories). As such, real-world recommender systems often explicitly incorporate diversity into recommendations, at the cost of accuracy.
We study the accuracy-diversity trade-off by bringing in a third concept: user utility. We argue that accuracy is misaligned with user utility because it fails to incorporate a user's consumption constraints: at any given time, users can typically only use at most a few recommended items (e.g., dine at one restaurant, or watch a couple of movies). In a theoretical model, we show that utility-maximizing recommendations---when accounting for consumption constraints---are naturally diverse due to diminishing returns of recommending similar items. Therefore, while increasing diversity may come at the cost of accuracy, it can also help align accuracy-based recommendations toward the more fundamental objective of user utility. Our theoretical results yield practical guidance into how recommendations should incorporate diversity to serve user ends.
Description
WWW ’24: Proceedings of the ACM on Web Conference May 13–17, 2024, Singapore, Singapore
Date issued
2024-05-13Department
Sloan School of ManagementPublisher
ACM
Citation
Peng, Kenny, Raghavan, Manish, Pierson, Emma, Kleinberg, Jon and Garg, Nikhil. 2024. "Reconciling the Accuracy-Diversity Trade-off in Recommendations."
Version: Final published version
ISBN
979-8-4007-0171-9