Abstract—Multi-agent systems (MAS) are a field of study of growing interest in a variety of domains such as robotics or distributed controls. The article focuses on decentralized reinforcement learning (RL) in cooperative MAS, where a team of independent learning robots (IL) try to coordinate their individual behavior to reach a coherent joint behavior. We assume that each robot has no information about its teammates’ actions. To date, RL approaches for such ILs did not guarantee convergence to the optimal joint policy in scenarios where the coordination is difficult. We report an investigation of existing algorithms for the learning of coordination in cooperative MAS, and suggest a Q-Learning extension for ILs, called Hysteretic Q-Learning...
We present an approach that uses Q-learning on individual robotic agents, for coordinating a mission...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
International audienceMulti-agent systems (MAS) are a field of study of growing interest in a variet...
We report on an investigation of reinforcement learning tech-niques for the learning of coordination...
We report on an investigation of reinforcement learning techniques for the learning of coordination ...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Despite the advancement of research and development on multi-robot teams, a key challenge still rema...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
<p>A multi-agent methodology is proposed for Decentralized Reinforcement Learning (DRL) of individua...
Cooperative multi-agent systems problems are ones in which several agents attempt, through their int...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
We present an approach that uses Q-learning on individual robotic agents, for coordinating a mission...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
International audienceMulti-agent systems (MAS) are a field of study of growing interest in a variet...
We report on an investigation of reinforcement learning tech-niques for the learning of coordination...
We report on an investigation of reinforcement learning techniques for the learning of coordination ...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Multi-Agent Reinforcement Learning (MARL) algorithms face two main difficulties: the curse of dimens...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Despite the advancement of research and development on multi-robot teams, a key challenge still rema...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
<p>A multi-agent methodology is proposed for Decentralized Reinforcement Learning (DRL) of individua...
Cooperative multi-agent systems problems are ones in which several agents attempt, through their int...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
We present an approach that uses Q-learning on individual robotic agents, for coordinating a mission...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...