Semi Bandit Dynamics in Congestion Games: Convergence to Nash Equilibrium and No-Regret Guarantees

06/27/2023
by   Ioannis Panageas, et al.
0

In this work, we introduce a new variant of online gradient descent, which provably converges to Nash Equilibria and simultaneously attains sublinear regret for the class of congestion games in the semi-bandit feedback setting. Our proposed method admits convergence rates depending only polynomially on the number of players and the number of facilities, but not on the size of the action set, which can be exponentially large in terms of the number of facilities. Moreover, the running time of our method has polynomial-time dependence on the implicit description of the game. As a result, our work answers an open question from (Du et. al, 2022).

READ FULL TEXT
research
06/04/2022

Learning in Congestion Games with Bandit Feedback

Learning Nash equilibria is a central problem in multi-agent systems. In...
research
06/19/2023

Taming the Exponential Action Set: Sublinear Regret and Fast Convergence to Nash Equilibrium in Online Congestion Games

The congestion game is a powerful model that encompasses a range of engi...
research
05/14/2022

No-regret learning for repeated non-cooperative games with lossy bandits

This paper considers no-regret learning for repeated continuous-kernel g...
research
06/15/2019

Learning in Cournot Games with Limited Information Feedback

In this work, we study the interaction of strategic players in continuou...
research
10/03/2018

Bandit learning in concave N-person games

This paper examines the long-run behavior of learning with bandit feedba...
research
10/24/2022

Offline congestion games: How feedback type affects data coverage requirement

This paper investigates when one can efficiently recover an approximate ...
research
06/18/2022

Mutation-Driven Follow the Regularized Leader for Last-Iterate Convergence in Zero-Sum Games

In this study, we consider a variant of the Follow the Regularized Leade...

Please sign up or login with your details

Forgot password? Click here to reset