论文标题

沟通有限的说服算法

Algorithms for Persuasion with Limited Communication

论文作者

Gradwohl, Ronen, Hahn, Niklas, Hoefer, Martin, Smorodinsky, Rann

论文摘要

战略通信模型的贝叶斯说服范式(称为发件人)与无知但理性的代理人,称为接收者。该目标通常是为发件人设计(接近)最佳通信(或信号)方案。它使发件人能够以激励她采取发件人首选的诉讼的方式向接收者披露信息。通常,发现最佳信号传导方案通常在计算上很难。当对消息空间的大小也有限制时,这种硬度会进一步加剧,从而导致在任何常数因子内近似最佳发送器实用程序的NP硬度。 在本文中,我们表明在几种自然和突出的情况下,即使消息空间有限,优化问题也可以解决。特别是,我们研究了对称性或独立性假设对动作的效用值分布的信号。对于对称分布,我们提供了最佳信号传导方案的新表征。它导致多项式时间算法计算许多紧凑的对称分布的最佳方案。在独立的情况下,我们设计了一种恒定因子近似算法,该算法与一般情况下的近似硬度形成鲜明对比。

The Bayesian persuasion paradigm of strategic communication models interaction between a privately-informed agent, called the sender, and an ignorant but rational agent, called the receiver. The goal is typically to design a (near-)optimal communication (or signaling) scheme for the sender. It enables the sender to disclose information to the receiver in a way as to incentivize her to take an action that is preferred by the sender. Finding the optimal signaling scheme is known to be computationally difficult in general. This hardness is further exacerbated when there is also a constraint on the size of the message space, leading to NP-hardness of approximating the optimal sender utility within any constant factor. In this paper, we show that in several natural and prominent cases the optimization problem is tractable even when the message space is limited. In particular, we study signaling under a symmetry or an independence assumption on the distribution of utility values for the actions. For symmetric distributions, we provide a novel characterization of the optimal signaling scheme. It results in a polynomial-time algorithm to compute an optimal scheme for many compactly represented symmetric distributions. In the independent case, we design a constant-factor approximation algorithm, which stands in marked contrast to the hardness of approximation in the general case.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源