A Framework for Studying Decentralized Bayesian Learning with Strategic Agents

Q1 Mathematics
Deepanshu Vasal, A. Anastasopoulos
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引用次数: 2

Abstract

We study the problem of Bayesian learning in a dynamical system involving strategic agents with asymmetric information. In a series of seminal papers in the literature, this problem has been investigated under a simplifying model where selfish players appear sequentially and act once in the game. It has been shown that there exist information cascades where users discard their private information and mimic the action of their predecessor. In this paper, we provide a framework for studying Bayesian learning dynamics in a more general setting than the one just described. In particular, our model incorporates cases where players can act repeatedly and there is strategic interaction in that each agent’s payoff may also depend on other players’ actions. The proposed framework hinges on a sequential decomposition methodology for finding structured perfect Bayesian equilibria of a general class of dynamic games with asymmetric information. Using this methodology, we study a specific dynamic learning model where players make decisions about public investment based on their estimates of everyone’s states. We characterize a set of informational cascades for this problem where learning stops for the team as a whole. Moreover, we show that such cascades occur almost surely.
一种基于策略代理的分散贝叶斯学习研究框架
研究了具有非对称信息的动态系统中策略主体的贝叶斯学习问题。在一系列开创性的文献中,这个问题已经在一个简化的模型下进行了研究,其中自私的玩家依次出现并在游戏中行动一次。研究表明,存在信息级联,用户丢弃自己的私人信息,模仿前任的行为。在本文中,我们提供了一个框架,用于在比刚才描述的更一般的环境中研究贝叶斯学习动力学。特别是,我们的模型包含了玩家可以重复行动的情况,并且存在战略互动,即每个代理的收益也可能取决于其他玩家的行动。所提出的框架依赖于序列分解方法,用于寻找具有不对称信息的一般动态博弈的结构化完美贝叶斯均衡。使用这种方法,我们研究了一个特定的动态学习模型,其中参与者根据他们对每个人状态的估计做出公共投资决策。我们为这个问题描述了一组信息级联,在这些级联中,整个团队的学习停止了。此外,我们表明这种级联几乎肯定会发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Stochastic Systems
Stochastic Systems Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
3.70
自引率
0.00%
发文量
18
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