Locally Bayesian Learning in Networks

Wei Li, Xu Tan
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引用次数: 2

Abstract

Agents in a network want to learn the true state of the world from their own signals and their neighbors' reports. Agents know only their local networks, consisting of their neighbors and the links among them. Every agent is Bayesian with the (possibly misspecified) prior belief that her local network is the entire network. We present a tractable learning rule to implement such locally Bayesian learning: each agent extracts new information using the full history of observed reports in her local network. Despite their limited network knowledge, agents learn correctly when the network is a social quilt, a tree-like union of cliques. But they fail to learn when a network contains interlinked circles (echo chambers), despite an arbitrarily large number of correct signals.
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网络中的局部贝叶斯学习
网络中的智能体想要从自己的信号和邻居的报告中了解世界的真实状态。代理只知道它们的本地网络,由它们的邻居和它们之间的链接组成。每个智能体都是贝叶斯的,其(可能指定错误的)先验信念是她的局部网络是整个网络。我们提出了一种易于处理的学习规则来实现这种局部贝叶斯学习:每个智能体使用其局部网络中观察到的报告的完整历史提取新信息。尽管他们的网络知识有限,但当网络是一个社会被子,一个像树一样的小集团联盟时,智能体就能正确地学习。但是,当一个网络包含相互连接的圆圈(回声室)时,尽管有任意大量的正确信号,它们却无法学习。
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