This work investigates the case of a network of agents that attempt to learn some unknown state of the world amongst the finitely many possibilities. At each time step, agents all receive random, independently distributed private signals whose distributions are dependent on the unknown state of the world. However, it may be the case that some or any of the agents cannot distinguish between two or more of the possible states based only on their private observations, as when several states result in the same distribution of the private signals. In our model, the agents form some initial belief (probability distribution) about the unknown state and then refine their beliefs in accordance with their private observations, as well as the beliefs ...
This work examines a social learning problem, where dispersed agents connected through a network top...
Many important real-world decision-making problems involve group interactions among individuals with...
We develop a dynamic model of opinion formation in social networks when the information required for...
This work investigates the case of a network of agents that attempt to learn some unknown state of t...
We consider a network of agents that aim to learn some unknown state of the world using private obse...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
We analyze a model of learning and belief formation in networks in which agents follow Bayes ...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
We consider a set of agents who are attempting to iteratively learn the 'state of the world' from t...
We consider an infinite collection of agents who make decisions, sequentially, about an unknown unde...
Abstract This paper addresses the problem of non-Bayesian learning over multi-agent n...
We study the perfect Bayesian equilibrium of a model of learning over a general social network. Each...
We develop a dynamic model of opinion formation in social networks when the infor-mation required fo...
We consider a group of Bayesian agents who try to estimate a state of the world θ through interactio...
We study a social learning model in which agents iteratively update their beliefs about the true sta...
This work examines a social learning problem, where dispersed agents connected through a network top...
Many important real-world decision-making problems involve group interactions among individuals with...
We develop a dynamic model of opinion formation in social networks when the information required for...
This work investigates the case of a network of agents that attempt to learn some unknown state of t...
We consider a network of agents that aim to learn some unknown state of the world using private obse...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
We analyze a model of learning and belief formation in networks in which agents follow Bayes ...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
We consider a set of agents who are attempting to iteratively learn the 'state of the world' from t...
We consider an infinite collection of agents who make decisions, sequentially, about an unknown unde...
Abstract This paper addresses the problem of non-Bayesian learning over multi-agent n...
We study the perfect Bayesian equilibrium of a model of learning over a general social network. Each...
We develop a dynamic model of opinion formation in social networks when the infor-mation required fo...
We consider a group of Bayesian agents who try to estimate a state of the world θ through interactio...
We study a social learning model in which agents iteratively update their beliefs about the true sta...
This work examines a social learning problem, where dispersed agents connected through a network top...
Many important real-world decision-making problems involve group interactions among individuals with...
We develop a dynamic model of opinion formation in social networks when the information required for...