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Learning With Privacy in Consensus Obfuscation

机译:共识混淆中的隐私学习

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摘要

We examine the interplay between learning and privacy over multiagent consensus networks. The learning objective of each individual agent consists of computing some global network statistic, and is accomplished by means of a consensus protocol. The privacy objective consists of preventing inference of the individual agents’ data from the information exchanged during the consensus stages, and is accomplished by adding some artificial noise to the observations (obfuscation). An analytical characterization of the learning and privacy performance is provided, with reference to a consensus perturbing and to a consensus-preserving obfuscation strategy.
机译:我们研究了多代理共识网络上的学习与隐私之间的相互作用。每个代理的学习目标包括计算一些全局网络统计信息,并通过共识协议来实现。隐私保护目标包括防止在共识阶段交换的信息中推断出各个代理的数据,并通过在观察结果中添加一些人工噪声(混淆)来实现。提供了学习和隐私性能的分析特征,并参考了共识的干扰和保持共识的混淆策略。

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