International audienceWe consider the problem of learning equilibria in a well known game theoretic traffic model due to Wardrop. We consider a distributed learning algorithm that we prove to converge to equilibria. The proof of convergence is based on a differential equation governing the global macroscopic evolution of the system, inferred from the local microscopic evolutions of agents. We prove that the differential equation converges with the help of Lyapunov techniques
There are several approaches for optimizing network routing in general. In this document, we are int...
We study the question of whether a large population of agents in a traffic network is able to conver...
Several problems in transportation and communication networks lead to the notion of Wardrop equilibr...
International audienceWe consider the problem of learning equilibria in a well known game theoretic ...
International audienceWe focus on the problem of learning equilibria in a particular routing game si...
International audienceWe consider a family of stochastic distributed dynamics to learn equilibria in...
Abstract We consider a family of stochastic distributed dynamics to learn equilibria in games, that ...
In this letter, we deal with evolutionary game-theoretic learning processes for population games on ...
In this letter, we deal with evolutionary game-theoretic learning processes for population games on ...
The paper concerns the development of distributed equilibria learning strategies in large-scale mult...
Abstract—The paper concerns the development of distributed equilibria learning strategies in large-s...
We study the repeated congestion game, in which multiple populations of players share resources, and...
There are several approaches for optimizing network routing in general. In this document, we are int...
We study the question of whether a large population of agents in a traffic network is able to conver...
Several problems in transportation and communication networks lead to the notion of Wardrop equilibr...
International audienceWe consider the problem of learning equilibria in a well known game theoretic ...
International audienceWe focus on the problem of learning equilibria in a particular routing game si...
International audienceWe consider a family of stochastic distributed dynamics to learn equilibria in...
Abstract We consider a family of stochastic distributed dynamics to learn equilibria in games, that ...
In this letter, we deal with evolutionary game-theoretic learning processes for population games on ...
In this letter, we deal with evolutionary game-theoretic learning processes for population games on ...
The paper concerns the development of distributed equilibria learning strategies in large-scale mult...
Abstract—The paper concerns the development of distributed equilibria learning strategies in large-s...
We study the repeated congestion game, in which multiple populations of players share resources, and...
There are several approaches for optimizing network routing in general. In this document, we are int...
We study the question of whether a large population of agents in a traffic network is able to conver...
Several problems in transportation and communication networks lead to the notion of Wardrop equilibr...