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Social Learning and Bayesian Games in Multiagent Signal Processing: How Do Local and Global Decision Makers Interact?

机译:多主体信号处理中的社会学习和贝叶斯游戏:本地和全球决策者如何互动?

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摘要

How do local agents and global decision makers interact in statistical signal processing problems where autonomous decisions need to be made? When individual agents possess limited sensing, computation, and communication capabilities, can a network of agents achieve sophisticated global behavior? Social learning and Bayesian games are natural settings for addressing these questions. This article presents an overview, novel insights, and a discussion of social learning and Bayesian games in adaptive sensing problems when agents communicate over a network. Two highly stylized examples that demonstrate to the reader the ubiquitous nature of the models, algorithms, and analysis in statistical signal processing are discussed in tutorial fashion.
机译:在需要做出自主决策的统计信号处理问题中,本地代理商和全球决策者如何互动?当单个代理具有有限的感知,计算和通信功能时,代理网络是否可以实现复杂的全局行为?社交学习和贝叶斯游戏是解决这些问题的自然环境。本文介绍了概述,新颖的见解,以及关于当代理通过网络进行通信时自适应感测问题中的社会学习和贝叶斯游戏的讨论。以教程的形式讨论了两个高度程式化的示例,向读者展示了模型,算法和统计信号处理中的分析的普适性。

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