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CDC
2008
IEEE

Convergence of rule-of-thumb learning rules in social networks

13 years 11 months ago
Convergence of rule-of-thumb learning rules in social networks
— We study the problem of dynamic learning by a social network of agents. Each agent receives a signal about an underlying state and communicates with a subset of agents (his neighbors) in each period. The network is connected. In contrast to the majority of existing learning models, we focus on the case where the underlying state is time-varying. We consider the following class of rule of thumb learning rules: at each period, each agent constructs his posterior as a weighted average of his prior, his signal and the information he receives from neighbors. The weights given to signals can vary over time and the weights given to neighbors can vary across agents. We distinguish between two subclasses: (1) constant weight rules; (2) diminishing weight rules. The latter reduces weights given to signals asymptotically to 0. Our main results characterize the asymptotic behavior of beliefs. We show that the general class of rules leads to unbiased estimates of the underlying state. When the ...
Daron Acemoglu, Angelia Nedic, Asuman E. Ozdaglar
Added 29 May 2010
Updated 29 May 2010
Type Conference
Year 2008
Where CDC
Authors Daron Acemoglu, Angelia Nedic, Asuman E. Ozdaglar
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