Abstract
Information policies such as scores, ratings, and recommendations are increasingly shaping society’s choices in high-stakes domains. We provide a framework to study the welfare implications of information policies on a population of heterogeneous individuals. We define and characterize the Bayes welfare set, consisting of the population’s utility profiles that are feasible under some information policy. The Pareto frontier of this set can be recovered by a series of standard Bayesian persuasion problems. We provide necessary and sufficient conditions under which an information policy exists that Pareto dominates the no-information policy. We illustrate our results with applications to data leakage, price discrimination, and credit ratings.
Reference
Laura Doval, and Alex Smolin, “Persuasion and Welfare”, Journal of Political Economy, vol. 132, n. 7, July 2024.
Published in
Journal of Political Economy, vol. 132, n. 7, July 2024