We consider multi-agent decision making where each agent's cost function depends on all agents' strategies. We propose a distributed algorithm to learn a Nash equilibrium, whereby each agent uses only obtained values of her cost function at each joint played action, lacking any information of the functional form of her cost or other agents' costs or strategy sets. In contrast to past work where convergent algorithms required strong monotonicity, we prove algorithm convergence under mere monotonicity assumption. This significantly widens algorithm's applicability, such as to games with linear coupling constraints
We address the Nash equilibrium problem in a partial-decision information scenario, where each agent...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
We design a distributed algorithm for learning Nash equilibria over time-varying communication netwo...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This work regards Nash equilibrium-seeking in multi-player finite games. We present a discrete-time ...
This paper studies learning in monotone Bayesian games with one-dimensional types and finitely many ...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
An individual’s learning rule is completely uncoupled if it does not depend directly on the actions ...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
We address the Nash equilibrium problem in a partial-decision information scenario, where each agent...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
We design a distributed algorithm for learning Nash equilibria over time-varying communication netwo...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This work regards Nash equilibrium-seeking in multi-player finite games. We present a discrete-time ...
This paper studies learning in monotone Bayesian games with one-dimensional types and finitely many ...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
An individual’s learning rule is completely uncoupled if it does not depend directly on the actions ...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
We address the Nash equilibrium problem in a partial-decision information scenario, where each agent...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
We design a distributed algorithm for learning Nash equilibria over time-varying communication netwo...