We consider multi-armed bandit problems in social groups wherein each individual has bounded memory and shares the common goal of learning the best arm/option. We say an individual learns the best option if eventually (as $t\diverge$) it pulls only the arm with the highest expected reward. While this goal is provably impossible for an isolated individual due to bounded memory, we show that, in social groups, this goal can be achieved easily with the aid of social persuasion (i.e., communication) as long as the communication networks/graphs satisfy some mild conditions. In this work, we model and analyze a type of learning dynamics which are well-observed in social groups. Specifically, under the learning dynamics of interest, an individual ...
We study a social learning scheme where at every time instant, each agent chooses to receive informa...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
the date of receipt and acceptance should be inserted later Abstract We evaluate the asymptotic perf...
We consider a collaborative online learning paradigm, wherein a group of agents connected through a ...
We evaluate the asymptotic performance of boundedly-rational strate-gies in multi-armed bandit probl...
In this dissertation, we study diffusion social learning over weakly-connected graphs and reveal sev...
We study social learning in a large population of agents who only observe the actions taken by their...
In a bandit problem there is a set of arms, each of which when played by an agent yields some reward...
We develop a model of information exchange through communication and investigate its impli-cations f...
Multi-armed bandit problems are receiving a great deal of attention because they adequately formaliz...
We study a distributed multi-armed bandit setting among a population of $n$ memory-constrained nodes...
We consider a set of agents who are attempting to iteratively learn the ‘state of the world ’ from t...
In this paper, we study diffusion social learning over weakly connected graphs. We show that the asy...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
We study a social learning scheme where at every time instant, each agent chooses to receive informa...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
the date of receipt and acceptance should be inserted later Abstract We evaluate the asymptotic perf...
We consider a collaborative online learning paradigm, wherein a group of agents connected through a ...
We evaluate the asymptotic performance of boundedly-rational strate-gies in multi-armed bandit probl...
In this dissertation, we study diffusion social learning over weakly-connected graphs and reveal sev...
We study social learning in a large population of agents who only observe the actions taken by their...
In a bandit problem there is a set of arms, each of which when played by an agent yields some reward...
We develop a model of information exchange through communication and investigate its impli-cations f...
Multi-armed bandit problems are receiving a great deal of attention because they adequately formaliz...
We study a distributed multi-armed bandit setting among a population of $n$ memory-constrained nodes...
We consider a set of agents who are attempting to iteratively learn the ‘state of the world ’ from t...
In this paper, we study diffusion social learning over weakly connected graphs. We show that the asy...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
We study a social learning scheme where at every time instant, each agent chooses to receive informa...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We study a model of learning on social networks in dynamic environments, describing a group of agent...