Although multi-agent reinforcement learning can tackle systems of strategically interacting entities, it currently fails in scalability and lacks rigorous convergence guarantees. Crucially, learning in multi-agent systems can become intractable due to the explosion in the size of the state-action space as the number of agents increases. In this paper, we propose a method for computing closed-loop optimal policies in multi-agent systems that scales independently of the number of agents. This allows us to show, for the first time, successful convergence to optimal behaviour in systems with an unbounded number of interacting adaptive learners. Studying the asymptotic regime of N-player stochastic games, we devise a learning protocol that is gu...
We present a novel and uniform formulation of the problem of reinforcement learning against bounded ...
This paper investigates the problem of policy learning in multiagent environments using the stochast...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
Abstract In large systems, it is important for agents to learn to act effectively, but sophisticated...
Due to the non-stationary environment, learning in multi-agent systems is a challenging problem. Thi...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
In large systems, it is important for agents to learn to act ef-fectively, but sophisticated multi-a...
We propose a multi-agent reinforcement learning dynamics, and analyze its convergence properties in ...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We present a novel and uniform formulation of the problem of reinforcement learning against bounded ...
This paper investigates the problem of policy learning in multiagent environments using the stochast...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
Abstract In large systems, it is important for agents to learn to act effectively, but sophisticated...
Due to the non-stationary environment, learning in multi-agent systems is a challenging problem. Thi...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
In large systems, it is important for agents to learn to act ef-fectively, but sophisticated multi-a...
We propose a multi-agent reinforcement learning dynamics, and analyze its convergence properties in ...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We present a novel and uniform formulation of the problem of reinforcement learning against bounded ...
This paper investigates the problem of policy learning in multiagent environments using the stochast...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...