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Switching to learn

机译:切换学习

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摘要

A network of agents attempt to learn some unknown state of the world drawn by nature from a finite set. Agents observe private signals conditioned on the true state, and form beliefs about the unknown state accordingly. Each agent may face an identification problem in the sense that she cannot distinguish the truth in isolation. However, by communicating with each other, agents are able to benefit from side observations to learn the truth collectively. Unlike many distributed algorithms which rely on all-time communication protocols, we propose an efficient method by switching between Bayesian and non-Bayesian regimes. In this model, agents exchange information only when their private signals are not informative enough; thence, by switching between the two regimes, agents efficiently learn the truth using only a few rounds of communications. The proposed algorithm preserves learnability while incurring a lower communication cost. We also verify our theoretical findings by simulation examples.
机译:代理商网络试图从有限的集合中了解自然界的某些未知状态。代理观察以真实状态为条件的私人信号,并据此形成对未知状态的信念。每个代理人都可能面临无法单独区分真相的识别问题。但是,通过相互沟通,特工可以从旁观中受益,从而集体学习真相。与许多依赖于全时通信协议的分布式算法不同,我们提出了一种通过在贝叶斯和非贝叶斯体制之间切换的有效方法。在此模型中,代理仅在其私人信号不够充分时才交换信息;因此,通过在两种制度之间进行切换,代理仅需进行几轮沟通即可有效地了解真相。所提出的算法在保持可学习性的同时降低了通信成本。我们还通过仿真示例验证了我们的理论发现。

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