Granular DeGroot dynamics – A model for robust naive learning in social networks

Gideon Amir, Itai Arieli, Galit Ashkenazi-Golan, Ron Peretz

Research output: Contribution to journalArticlepeer-review

Abstract

We study a model of opinion exchange in social networks where a state of the world is realized and every agent receives a zero-mean noisy signal of the realized state. Golub and Jackson (2010) have shown that under DeGroot (1974) dynamics agents reach a consensus that is close to the state of the world when the network is large. The DeGroot dynamics, however, is highly non-robust and the presence of a single “adversarial agent” that does not adhere to the updating rule can sway the public consensus to any other value. We introduce a variant of DeGroot dynamics that we call [Formula presented]-DeGroot dynamics approximates standard DeGroot dynamics to the nearest rational number with m as its denominator and like the DeGroot dynamics it is Markovian and stationary. We show that in contrast to standard DeGroot dynamics, [Formula presented]-DeGroot dynamics is highly robust both to the presence of adversarial agents and to certain types of misspecifications.

Original languageEnglish
Article number105952
JournalJournal of Economic Theory
Volume223
DOIs
StatePublished - Jan 2025

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