No-Regret Learning in Network Stochastic Zero-Sum Games

05/29/2022
by   Shijie Huang, et al.
0

No-regret learning has been widely used to compute a Nash equilibrium in two-person zero-sum games. However, there is still a lack of regret analysis for network stochastic zero-sum games, where players competing in two subnetworks only have access to some local information, and the cost functions include uncertainty. Such a game model can be found in security games, when a group of inspectors work together to detect a group of evaders. In this paper, we propose a distributed stochastic mirror descent (D-SMD) method, and establish the regret bounds O(√(T)) and O(log T) in the expected sense for convex-concave and strongly convex-strongly concave costs, respectively. Our bounds match those of the best known first-order online optimization algorithms. We then prove the convergence of the time-averaged iterates of D-SMD to the set of Nash equilibria. Finally, we show that the actual iterates of D-SMD almost surely converge to the Nash equilibrium in the strictly convex-strictly concave setting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/26/2021

Adaptive Learning in Continuous Games: Optimal Regret Bounds and Convergence to Nash Equilibrium

In game-theoretic learning, several agents are simultaneously following ...
research
07/27/2018

Acceleration through Optimistic No-Regret Dynamics

We consider the problem of minimizing a smooth convex function by reduci...
research
06/21/2018

Online Saddle Point Problem with Applications to Constrained Online Convex Optimization

We study an online saddle point problem where at each iteration a pair o...
research
11/18/2014

A Unified View of Large-scale Zero-sum Equilibrium Computation

The task of computing approximate Nash equilibria in large zero-sum exte...
research
05/17/2018

Faster Rates for Convex-Concave Games

We consider the use of no-regret algorithms to compute equilibria for pa...
research
11/25/2022

Zero-Sum Stochastic Stackelberg Games

Zero-sum stochastic games have found important applications in a variety...
research
05/11/2019

Fast and Furious Learning in Zero-Sum Games: Vanishing Regret with Non-Vanishing Step Sizes

We show for the first time, to our knowledge, that it is possible to rec...

Please sign up or login with your details

Forgot password? Click here to reset