How Algorithmic Confounding in Recommendation Systems Increases Homogeneity and Decreases Utility
Proceedings of the 12th ACM Conference on Recommender Systems (RecSys '18), 224-232, 2018.
Abstract
Recommendation systems are ubiquitous and impact many domains; they have the potential to influence product consumption, individuals' perceptions of the world, and life-altering decisions. These systems are often evaluated or trained with data from users already exposed to algorithmic recommendations; this creates a pernicious feedback loop. Using simulations, we demonstrate how using data confounded in this way homogenizes user behavior without increasing utility.
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