We consider a network scenario in which agents can evaluate each other according to a score graph that models some interactions. The goal is to design a distributed protocol, run by the agents, that allows them to learn their unknown state among a finite set of possible values. We propose a Bayesian framework in which scores and states are associated to probabilistic events with unknown parameters and hyperparameters, respectively. We show that each agent can learn its state by means of a local Bayesian classifier and a (centralized) Maximum-Likelihood (ML) estimator of parameter-hyperparameter that combines plain ML and Empirical Bayes approaches. By using tools from graphical models, which allow us to gain insight on conditional dependenc...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
ISIT Student Paper Award). This paper considers the problem of distributed hypothesis testing and so...
Abstract—A protocol for distributed estimation of discrete distributions is proposed. Each agent beg...
We consider a network scenario in which agents can evaluate each other according to a score graph th...
In this paper, we consider a network scenario in which agents can evaluate each other according to a...
Due to the proliferation of social networks and their significant effects on our day-to-day activiti...
This work proposes a decentralized architecture, where individual agents aim at solving a classifica...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Learning, prediction and identification has been a main topic of interest in science and engineering...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
Understanding information exchange and aggregation on networks is a central problem in theoretical e...
Abstract—This paper considers a problem of distributed hypothesis testing and social learning. Indiv...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
ISIT Student Paper Award). This paper considers the problem of distributed hypothesis testing and so...
Abstract—A protocol for distributed estimation of discrete distributions is proposed. Each agent beg...
We consider a network scenario in which agents can evaluate each other according to a score graph th...
In this paper, we consider a network scenario in which agents can evaluate each other according to a...
Due to the proliferation of social networks and their significant effects on our day-to-day activiti...
This work proposes a decentralized architecture, where individual agents aim at solving a classifica...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Learning, prediction and identification has been a main topic of interest in science and engineering...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
Understanding information exchange and aggregation on networks is a central problem in theoretical e...
Abstract—This paper considers a problem of distributed hypothesis testing and social learning. Indiv...
AbstractThis paper addresses the issue of designing an effective distributed learning system in whic...
ISIT Student Paper Award). This paper considers the problem of distributed hypothesis testing and so...
Abstract—A protocol for distributed estimation of discrete distributions is proposed. Each agent beg...