Score: 0

Data-Driven Persuasion

Published: July 3, 2025 | arXiv ID: 2507.03203v2

By: Maxwell Rosenthal

Potential Business Impact:

Helps people convince others with hidden information.

Business Areas:
A/B Testing Data and Analytics

This paper develops a data-driven approach to Bayesian persuasion. The receiver is privately informed about the prior distribution of the state of the world, the sender knows the receiver's preferences but does not know the distribution of the state variable, and the sender's payoffs depend on the receiver's action but not on the state. Prior to interacting with the receiver, the sender observes the distribution of actions taken by a population of decision makers who share the receiver's preferences in best response to an unobserved distribution of messages generated by an unknown and potentially heterogeneous signal. The sender views any prior that rationalizes this data as plausible and seeks a signal that maximizes her worst-case payoff against the set of all such distributions. We show positively that the two-state many-action problem has a saddle point and negatively that the two-action many-state problem does not. In the former case, we identify adversarial priors and optimal signals. In the latter, we characterize the set of robustly optimal Blackwell experiments.

Country of Origin
πŸ‡ΊπŸ‡Έ United States

Page Count
36 pages

Category
Economics:
Theoretical Economics