We consider a discrete-time nonatomic routing game with variable demand and uncertain costs. Given a routing network with single origin and destination, the cost function of each edge depends on some uncertain persistent state parameter. At every period, a random traffic demand is routed through the network according to a Wardrop equilibrium. The realized costs are publicly observed and the public Bayesian belief about the state parameter is updated. We say that there is strong learning when beliefs converge to the truth and weak learning when the equilibrium flow converges to the complete-information flow. We characterize the networks for which learning occurs. We prove that these networks have a series-parallel structure and provide a cou...
We consider a non-atomic network congestion game with incomplete information in which nature decides...
The unifying theme of this thesis is the design and analysis of adaptive procedures that are aimed a...
Thesis: S.M., Massachusetts Institute of Technology, School of Engineering, Center for Computational...
We consider a discrete-time nonatomic routing game with variable demand and uncertain costs. Given a...
International audienceWe focus on the problem of learning equilibria in a particular routing game si...
We study the repeated, non-atomic routing game, in which selfish players make a sequence of rout-ing...
We consider a class of networks where n agents need to send their traffic from a given source to a g...
The paper studies routing in loss networks in the framework of a non-cooperative game with selfish u...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
We consider a Bayesian game of pure informational externalities, in which a group of agents learn a ...
In a discrete routing game, each of n selfish users employs a mixed strategy to ship its (unsplittab...
In this paper we investigate equilibriums in the Bayesian routing problem of the network game introd...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
International audienceWe consider an instance of a nonatomic routing game. We assume that the networ...
We consider a non-atomic network congestion game with incomplete information in which nature decides...
The unifying theme of this thesis is the design and analysis of adaptive procedures that are aimed a...
Thesis: S.M., Massachusetts Institute of Technology, School of Engineering, Center for Computational...
We consider a discrete-time nonatomic routing game with variable demand and uncertain costs. Given a...
International audienceWe focus on the problem of learning equilibria in a particular routing game si...
We study the repeated, non-atomic routing game, in which selfish players make a sequence of rout-ing...
We consider a class of networks where n agents need to send their traffic from a given source to a g...
The paper studies routing in loss networks in the framework of a non-cooperative game with selfish u...
We study the (perfect Bayesian) equilibrium of a sequential learning model over a general social net...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
We consider a Bayesian game of pure informational externalities, in which a group of agents learn a ...
In a discrete routing game, each of n selfish users employs a mixed strategy to ship its (unsplittab...
In this paper we investigate equilibriums in the Bayesian routing problem of the network game introd...
We study perfect Bayesian equilibria of a sequential social learning model in which agents in a netw...
International audienceWe consider an instance of a nonatomic routing game. We assume that the networ...
We consider a non-atomic network congestion game with incomplete information in which nature decides...
The unifying theme of this thesis is the design and analysis of adaptive procedures that are aimed a...
Thesis: S.M., Massachusetts Institute of Technology, School of Engineering, Center for Computational...