Non-Bayesian Social Learning with Uncertain Models over Time-Varying Directed Graphs
Author(s)
Uribe, CA; Hare, JZ; Kaplan, L; Jadbabaie, A
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© 2019 IEEE. We study the problem of non-Bayesian social learning with uncertain models, in which a network of agents seek to cooperatively identify the state of the world based on a sequence of observed signals. In contrast with the existing literature, we focus our attention on the scenario where the statistical models held by the agents about possible states of the world are built from finite observations. We show that existing non-Bayesian social learning approaches may select a wrong hypothesis with non-zero probability under these conditions. Therefore, we propose a new algorithm to iteratively construct a set of beliefs that indicate whether a certain hypothesis is supported by the empirical evidence. This new algorithm can be implemented over time-varying directed graphs, with non-doubly stochastic weights.
Date issued
2019-12-01Department
Massachusetts Institute of Technology. Institute for Data, Systems, and Society; Massachusetts Institute of Technology. Department of Civil and Environmental EngineeringJournal
Proceedings of the IEEE Conference on Decision and Control
Publisher
IEEE
Citation
Uribe, CA, Hare, JZ, Kaplan, L and Jadbabaie, A. 2019. "Non-Bayesian Social Learning with Uncertain Models over Time-Varying Directed Graphs." Proceedings of the IEEE Conference on Decision and Control, 2019-December.
Version: Author's final manuscript