In multi-receiver Bayesian persuasion, while characterizing feasible joint belief distributions unconditionally is complex, conditioning on the state reveals a simple structure: feasibility constraints apply only to individual receivers' marginals across states, allowing arbitrary correlation within a state. This insight leads to a novel primal-dual approach for solving persuasion problems, leveraging optimal transport theory and offering tractable solutions for specific classes of problems.
유한한 행동과 상태를 가진 커뮤니케이션 게임에서 발신자에게 약속이 가치 있는 경우는 발신자가 무작위 전략을 선호하는 경우뿐이며, 이는 베이지안 설득 문제에서 부분적 실험이 아닌 무작위 실험이 최적일 때 발생한다.
Bayesian persuasion studies strategic information disclosure to influence behavior.
The authors introduce Markov persuasion processes (MPPs) to address sequential scenarios where a sender interacts with myopic receivers in an unknown environment. They propose an algorithm that optimizes regret and violation trade-offs in learning without knowledge of receiver rewards.