We consider multi-agent decision making, where each agent optimizes its cost function subject to constraints. Agents’ actions belong to a compact convex Euclidean space and the agents’ cost functions are coupled. We propose a distributed payoff-based algorithm to learn Nash equilibria in the game between agents. Each agent uses only information about its current cost value to compute its next action. We prove convergence of the proposed algorithm to a Nash equilibrium in the game leveraging established results on stochastic processes. The performance of the algorithm is analyzed with a numerical case study
We propose a stochastic first-order algorithm to learn the rationality parameters of simultaneous an...
National audienceWe consider the problem of learning strategy selection in games. The theoretical so...
Learning in the real world occurs when an agent, which perceives its current state and takes actions...
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's cost function depends on all agents' stra...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
In this paper, we present a novel consensus-based zeroth-order algorithm tailored for non-convex mul...
The design of distributed algorithms is central to the study of multiagent systems control. In this ...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
Multi-agent reinforcement learning (MARL) has become effective in tackling discrete cooperative game...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
An individual’s learning rule is completely uncoupled if it does not depend directly on the actions ...
We propose a stochastic first-order algorithm to learn the rationality parameters of simultaneous an...
National audienceWe consider the problem of learning strategy selection in games. The theoretical so...
Learning in the real world occurs when an agent, which perceives its current state and takes actions...
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's cost function depends on all agents' stra...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
In this paper, we present a novel consensus-based zeroth-order algorithm tailored for non-convex mul...
The design of distributed algorithms is central to the study of multiagent systems control. In this ...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
Multi-agent reinforcement learning (MARL) has become effective in tackling discrete cooperative game...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
An individual’s learning rule is completely uncoupled if it does not depend directly on the actions ...
We propose a stochastic first-order algorithm to learn the rationality parameters of simultaneous an...
National audienceWe consider the problem of learning strategy selection in games. The theoretical so...
Learning in the real world occurs when an agent, which perceives its current state and takes actions...