Current approaches to multi-agent cooperation rely heavily on centralized mechanisms or explicit communication protocols to ensure convergence. This paper studies the problem of distributed multi-agent learning without resorting to centralized components or explicit communication. It examines the use of distribution matching to facilitate the coordination of independent agents. In the proposed scheme, each agent independently minimizes the distribution mismatch to the corresponding component of a target visitation distribution. The theoretical analysis shows that under certain conditions, each agent minimizing its individual distribution mismatch allows the convergence to the joint policy that generated the target distribution. Further, i...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
In this paper, we are interested in systems with multiple agents that wish to cooperate in order to ...
In the following paper we present a new algorithm for cooperative reinforcement learning in multi-ag...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Cooperative multi-agent reinforcement learning often requires decentralised policies, which severely...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We study the application of multi-agent reinforcement learning for game-theoretical problems. In par...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
Cooperative multi-agent systems (MAS) are finding applications in a wide variety of domains, includi...
Recent success in cooperative multi-agent reinforcement learning (MARL) relies on centralized traini...
Colloque avec actes et comité de lecture. internationale.International audienceIn the following pape...
Abstract. A novel approach for the reward distribution in multi-agent reinforcement learning is prop...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
In this paper, we are interested in systems with multiple agents that wish to cooperate in order to ...
In the following paper we present a new algorithm for cooperative reinforcement learning in multi-ag...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Cooperative multi-agent reinforcement learning often requires decentralised policies, which severely...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We study the application of multi-agent reinforcement learning for game-theoretical problems. In par...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
Cooperative multi-agent systems (MAS) are finding applications in a wide variety of domains, includi...
Recent success in cooperative multi-agent reinforcement learning (MARL) relies on centralized traini...
Colloque avec actes et comité de lecture. internationale.International audienceIn the following pape...
Abstract. A novel approach for the reward distribution in multi-agent reinforcement learning is prop...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
In this paper, we are interested in systems with multiple agents that wish to cooperate in order to ...
In the following paper we present a new algorithm for cooperative reinforcement learning in multi-ag...