Locally Bayesian learning in networks
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 treeālike union of cliques. But they fail to learn when a network contains interlinked circles (echo chambers), despite an arbitrarily large number of correct signals.
Year of publication: |
2020
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Authors: | Li, Wei ; Tan, Xu |
Published in: |
Theoretical Economics. - The Econometric Society, ISSN 1933-6837, ZDB-ID 2220447-7. - Vol. 15.2020, 1, p. 239-278
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Publisher: |
The Econometric Society |
Saved in:
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