Dynamics of Information Exchange in Endogenous Social Networks
50 Pages Posted: 25 Sep 2010
There are 2 versions of this paper
Dynamics of Information Exchange in Endogenous Social Networks
Dynamics of Information Exchange in Endogenous Social Networks
Date Written: September 23, 2010
Abstract
We develop a model of information exchange through communication and investigate its implications for information aggregation in large societies. An underlying state determines payoffs from different actions. Agents decide which others to form a costly communication link with incurring the associated cost. After receiving a private signal correlated with the underlying state, they exchange information over the induced communication network until taking an (irreversible) action. We define asymptotic learning as the fraction of agents taking the correct action converging to one in probability as a society grows large. Under truthful communication, we show that asymptotic learning occurs if (and under some additional conditions, also only if) in the induced communication network most agents are a short distance away from “information hubs,” which receive and distribute a large amount of information. Asymptotic learning therefore requires information to be aggregated in the hands of a few agents. We also show that while truthful communication may not always be a best response, it is an equilibrium when the communication network induces asymptotic learning. Moreover, we contrast equilibrium behavior with a socially optimal strategy profile, i.e., a profile that maximizes aggregate welfare. We show that when the network induces asymptotic learning, equilibrium behavior leads to maximum aggregate welfare, but this may not be the case when asymptotic learning does not occur. We then provide a systematic investigation of what types of cost structures and associated social cliques (consisting of groups of individuals inked to each other at zero cost, such as friendship networks) ensure the emergence of communication networks that lead to asymptotic learning. Our result shows that societies with 599 many and sufficiently large social cliques do not induce asymptotic learning, because each social clique would have sufficient information by itself, making communication with others relatively unattractive. Asymptotic learning results if social cliques are neither too numerous nor too large, in which communication across cliques is encouraged.
Keywords: communication, learning, network formation, social networks
JEL Classification: D83, D85
Suggested Citation: Suggested Citation
Do you have a job opening that you would like to promote on SSRN?
Recommended Papers
-
Persuasion Bias, Social Influence, and Uni-Dimensional Opinions
By Peter M. Demarzo, Jeffrey Zwiebel, ...
-
Naive Learning in Social Networks: Convergence, Influence and Wisdom of Crowds
By Matthew O. Jackson and Benjamin Golub
-
Bayesian Learning in Social Networks
By Daron Acemoglu, Munther Dahleh, ...
-
Bayesian Learning in Social Networks
By Ilan Lobel, Munther Dahleh, ...
-
Opinion Dynamics and Learning in Social Networks
By Daron Acemoglu and Asuman E. Ozdaglar
-
Rational Social Learning by Random Sampling
By Lones Smith and Peter Norman Sorensen
-
Information Percolation in Segmented Markets
By Darrell Duffie, Gustavo Manso, ...
-
Information Percolation in Segmented Markets
By Darrell Duffie, Semyon Malamud, ...
-
How Homophily Affects the Speed of Learning and Best Response Dynamics
By Benjamin Golub and Matthew O. Jackson
-
Spread of (Mis)Information in Social Networks
By Daron Acemoglu, Asuman E. Ozdaglar, ...