We calculate learning rates when agents are informed through both public and private observation of other agents’ actions. We provide an explicit solution for the evolution of the distribution of posterior beliefs. When the private learning channel is present, we show that convergence of the distribution of beliefs to the perfect-information limit is exponential at a rate equal to the sum of the mean arrival rate of public information and the mean rate at which individual agents are randomly matched with other agents. If, however, there is no private information sharing, then convergence is exponential at a rate strictly lower than the mean arrival rate of public information
This thesis offers a contribution to the study of Social Learning and Networks. It studies informati...
This paper reports on an experimental study of the way in which individuals make inferences from pub...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We calculate learning rates when agents are informed through public and private observation of other...
We study how a continuum of agents learn about disseminated information by observing others’ actions...
We consider social learning settings in which a group of agents face uncertainty regarding a state o...
We study the diffusion of dispersed private information in a large economy. We assume that agents le...
We study how effectively a group of rational agents learns from repeatedly observing each others' ac...
Short-lived agents want to predict a random variable $\theta $ and have to decide how much effort to...
People's payoffs are often jointly determined by their action and an unobserved common payoff releva...
This paper studies the effects on the asset price of the introduction of a public signal in the pres...
A number of experimental studies have found that pari-mutuel markets possess the ability to aggregat...
We consider two Bayesian agents who learn from exogenously provided private signals, as well as the ...
We prove that if n individuals start with the same prior over a probability space, and then each obs...
We introduce a simple model of the “percolation ” of information of common interest through a large ...
This thesis offers a contribution to the study of Social Learning and Networks. It studies informati...
This paper reports on an experimental study of the way in which individuals make inferences from pub...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We calculate learning rates when agents are informed through public and private observation of other...
We study how a continuum of agents learn about disseminated information by observing others’ actions...
We consider social learning settings in which a group of agents face uncertainty regarding a state o...
We study the diffusion of dispersed private information in a large economy. We assume that agents le...
We study how effectively a group of rational agents learns from repeatedly observing each others' ac...
Short-lived agents want to predict a random variable $\theta $ and have to decide how much effort to...
People's payoffs are often jointly determined by their action and an unobserved common payoff releva...
This paper studies the effects on the asset price of the introduction of a public signal in the pres...
A number of experimental studies have found that pari-mutuel markets possess the ability to aggregat...
We consider two Bayesian agents who learn from exogenously provided private signals, as well as the ...
We prove that if n individuals start with the same prior over a probability space, and then each obs...
We introduce a simple model of the “percolation ” of information of common interest through a large ...
This thesis offers a contribution to the study of Social Learning and Networks. It studies informati...
This paper reports on an experimental study of the way in which individuals make inferences from pub...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...