We study social learning in a large population of agents who only observe the actions taken by their neighbours. Agents have to choose one, out of two, reversible actions, each optimal in one, out of two, unknown states of the world. Each agent chooses rationally, on the basis of private information and of the observation of his neighbours’ actions. Agents can repeatedly update their choices at revision opportunities that they receive in a random sequential order. We show that if agents receive equally informative signals and observe both neighbours, then actions converge exponentially fast to a configuration where some agents are permanently wrong. In contrast, if agents are unequally informed (in that some agents receive a perfectly infor...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...
We develop a dynamic model of opinion formation in social networks when the infor-mation required fo...
We study social learning in a large population of agents who only observe the actions taken by their...
We study a simple dynamic model of social learning with local informational externalities. There is ...
We study a simple dynamic model of social learning with local informational externalities. There is ...
Abstract. We consider two Bayesian agents who learn from exogenously provided private signals, as we...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
When individuals in a social network learn about an unknown state from private signals and neighbors...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
International audienceWe study social learning by boundedly rational agents. Agents take a decision ...
We consider social learning settings in which a group of agents face uncertainty regarding a state o...
We consider a set of agents who are attempting to iteratively learn the 'state of the world' from t...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
We study how effectively a group of rational agents learns from repeatedly observing each others' ac...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...
We develop a dynamic model of opinion formation in social networks when the infor-mation required fo...
We study social learning in a large population of agents who only observe the actions taken by their...
We study a simple dynamic model of social learning with local informational externalities. There is ...
We study a simple dynamic model of social learning with local informational externalities. There is ...
Abstract. We consider two Bayesian agents who learn from exogenously provided private signals, as we...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
When individuals in a social network learn about an unknown state from private signals and neighbors...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
International audienceWe study social learning by boundedly rational agents. Agents take a decision ...
We consider social learning settings in which a group of agents face uncertainty regarding a state o...
We consider a set of agents who are attempting to iteratively learn the 'state of the world' from t...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
We study how effectively a group of rational agents learns from repeatedly observing each others' ac...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...
We develop a dynamic model of opinion formation in social networks when the infor-mation required fo...