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Bayesian Learning in Social Networks

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TLDR
The main theorem shows that when the probability that each individual observes some other individual from the recent past converges to one as the social network becomes large, unbounded private beliefs are sufficient to ensure asymptotic learning.
Abstract
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social network. Each individual receives a signal about the underlying state of the world, observes the past actions of a stochastically generated neighbourhood of individuals, and chooses one of two possible actions. The stochastic process generating the neighbourhoods defines the network topology. We characterize pure strategy equilibria for arbitrary stochastic and deterministic social networks and characterize the conditions under which there will be asymptotic learning—convergence (in probability) to the right action as the social network becomes large. We show that when private beliefs are unbounded (meaning that the implied likelihood ratios are unbounded), there will be asymptotic learning as long as there is some minimal amount of “expansion in observations”. We also characterize conditions under which there will be asymptotic learning when private beliefs are bounded.

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Citations
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Journal ArticleDOI

Distributed Subgradient Methods for Multi-Agent Optimization

TL;DR: The authors' convergence rate results explicitly characterize the tradeoff between a desired accuracy of the generated approximate optimal solutions and the number of iterations needed to achieve the accuracy.
Journal ArticleDOI

Naïve Learning in Social Networks and the Wisdom of Crowds

TL;DR: It is shown that all opinions in a large society converge to the truth if and only if the influence of the most influential agent vanishes as the society grows.
Journal ArticleDOI

Meeting Strangers and Friends of Friends: How Random are Social Networks?

TL;DR: It is shown that as the random/network-based meeting ratio varies, the resulting degree distributions can be ordered in the sense of stochastic dominance, which allows us to infer how the formation process affects average utility in the network.
Journal ArticleDOI

Opinion Dynamics and Learning in Social Networks

TL;DR: An overview of recent research on belief and opinion dynamics in social networks is provided and the implications of the form of learning, sources of information, and the structure of social networks are discussed.
Journal ArticleDOI

Opinion Dynamics and Learning in Social Networks

TL;DR: The authors provide an overview of recent research on belief and opinion dynamics in social networks and discuss both Bayesian and non-Bayesian models of social learning and focus on the implications of the form of learning.
References
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Journal ArticleDOI

The Strength of Weak Ties

TL;DR: In this paper, it is argued that the degree of overlap of two individuals' friendship networks varies directly with the strength of their tie to one another, and the impact of this principle on diffusion of influence and information, mobility opportunity, and community organization is explored.
Book

Stochastic processes

J. L. Doob, +1 more
Book

Stochastic Processes

Journal ArticleDOI

A Simple Model of Herd Behavior

TL;DR: In this article, the authors analyze a sequential decision model in which each decision maker looks at the decisions made by previous decision makers in taking her own decision, and they show that the decision rules that are chosen by optimizing individuals will be characterized by herd behavior.
Posted Content

A Theory of Fads, Fashion, Custom, and Cultural Change as Informational Cascades

TL;DR: It is argued that localized conformity of behavior and the fragility of mass behaviors can be explained by informational cascades.
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