Asynchronous Majority Dynamics in Preferential Attachment Trees

ICALP(2020)

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摘要
We study information aggregation in networks where agents make binary decisions (labeled incorrect or correct). Agents initially form independent private beliefs about the better decision, which is correct with probability $1/2+\delta$. The dynamics we consider are asynchronous (each round, a single agent updates their announced decision) and non-Bayesian (agents simply copy the majority announcements among their neighbors, tie-breaking in favor of their private signal). Our main result proves that when the network is a tree formed according to the preferential attachment model~\cite{BarabasiA99}, with high probability, the process stabilizes in a correct majority. We extend our results to other tree structures, including balanced $M$-ary trees for any $M$.
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