We study learning and influence in a setting where agents communicate according to an arbitrary social network and naively update their beliefs by repeatedly taking weighted averages of their neighbors' opinions. A focus is on conditions under which beliefs of all agents in large societies converge to the truth, despite their naive updating. We show that this happens if and only if the influence of the most influential agent in the society is vanishing as the society grows. Using simple examples, we identify two main obstructions which can prevent this. By ruling out these obstructions, we provide general structural conditions on the social network that are sufficient for convergence to truth. In addition, we show how social influence chang...
In this dissertation, we study diffusion social learning over weakly-connected graphs and reveal sev...
Abstract We provide an overview of recent research on belief and opinion dynamics in social networks...
We study how learning and influence co-evolve in a social network by extending the classical model o...
We study learning and influence in a setting where agents communicate according to an arbitrary soci...
We study social learning in a social network setting where agents receive independent noisy signals ...
Over the past few years, online social networks have become nearly ubiquitous, reshaping our social ...
Over the past few years, online social networks have become nearly ubiquitous, reshaping our social ...
We provide a model to investigate the tension between information aggregation and spread of misinfor...
We study the outcomes of information aggregation in online social networks. Our main result is that ...
We provide an overview of recent research on belief and opinion dynamics in social networks. We dis...
We investigate the role of manipulation in a model of opinion formation where agents have opinions a...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We provide an overview of recent research on belief and opinion dynamics in social networks. We disc...
We propose a boundedly-rational model of opinion formation where agents are subject to the phenomeno...
We study a dynamic model of opinion formation in social networks. In our model, boundedly rational a...
In this dissertation, we study diffusion social learning over weakly-connected graphs and reveal sev...
Abstract We provide an overview of recent research on belief and opinion dynamics in social networks...
We study how learning and influence co-evolve in a social network by extending the classical model o...
We study learning and influence in a setting where agents communicate according to an arbitrary soci...
We study social learning in a social network setting where agents receive independent noisy signals ...
Over the past few years, online social networks have become nearly ubiquitous, reshaping our social ...
Over the past few years, online social networks have become nearly ubiquitous, reshaping our social ...
We provide a model to investigate the tension between information aggregation and spread of misinfor...
We study the outcomes of information aggregation in online social networks. Our main result is that ...
We provide an overview of recent research on belief and opinion dynamics in social networks. We dis...
We investigate the role of manipulation in a model of opinion formation where agents have opinions a...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We provide an overview of recent research on belief and opinion dynamics in social networks. We disc...
We propose a boundedly-rational model of opinion formation where agents are subject to the phenomeno...
We study a dynamic model of opinion formation in social networks. In our model, boundedly rational a...
In this dissertation, we study diffusion social learning over weakly-connected graphs and reveal sev...
Abstract We provide an overview of recent research on belief and opinion dynamics in social networks...
We study how learning and influence co-evolve in a social network by extending the classical model o...