This paper addresses the problem of online learning in a dynamic setting. We consider a social network in which each individual observes a private signal about the underlying state of the world and communicates with her neighbors at each time period. Unlike many existing approaches, the underlying state is dynamic, and evolves according to a geometric random walk. We view the scenario as an optimization problem where agents aim to learn the true state while suffering the smallest possible loss. Based on the decomposition of the global loss function, we introduce two update mechanisms, each of which generates an estimate of the true state. We establish a tight bound on the rate of change of the underlying state, under which individuals can t...
This paper surveys mathematical models, structural results and algorithms in controlled sensing with...
Thesis (Ph.D.)--University of Washington, 2016-03This dissertation addresses learning in complex dyn...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
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...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
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...
Learning, prediction and identification has been a main topic of interest in science and engineering...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We study the problem of online learning and online regret minimization when samples are drawn from a...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Thesis (Ph.D.)--University of Washington, 2016-03This dissertation addresses learning in complex dyn...
This paper surveys mathematical models, structural results and algorithms in controlled sensing with...
Thesis (Ph.D.)--University of Washington, 2016-03This dissertation addresses learning in complex dyn...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
This paper addresses the problem of online learning in a dynamic setting. We consider a social netwo...
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...
We study a model of learning on social networks in dynamic environments, describing a group of agent...
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...
Learning, prediction and identification has been a main topic of interest in science and engineering...
e study the rate of convergence of Bayesian learning in social networks. Each individual receives a ...
We study the problem of online learning and online regret minimization when samples are drawn from a...
Learning, prediction and identification has been a main topic of interest in science and engineering...
Thesis (Ph.D.)--University of Washington, 2016-03This dissertation addresses learning in complex dyn...
This paper surveys mathematical models, structural results and algorithms in controlled sensing with...
Thesis (Ph.D.)--University of Washington, 2016-03This dissertation addresses learning in complex dyn...
We study the rate of convergence of Bayesian learning in social networks. Each individual receives ...