We report on an investigation of reinforcement learning techniques for the learning of coordination in cooperative multi-agent systems. Specifically, we focus on a novel action selection strategy for Q-learning. The new technique is applicable to scenarios where mutual observation of actions is not possible. To date, reinforcement learning approaches for such independent agents did not guarantee convergence to the optimal joint action in scenarios with high miscoordination costs. We improve on previous results by demonstrating empirically that our extension causes the agents to converge almost always to the optimal joint action even in these difficult cases
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
The problem of coordination in cooperative multiagent systems has been widely studied in the literat...
We report on an investigation of reinforcement learning techniques for the learning of coordination ...
We report on an investigation of reinforcement learning techniques for the learning of coordination...
We report on an investigation of reinforcement learning tech-niques for the learning of coordination...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Abstract—Multi-agent systems (MAS) are a field of study of growing interest in a variety of domains ...
One of the main problems in cooperative multiagent learning is that the joint action space is expone...
Multi-agent reinforcement learning (MARL) has become a prevalent method for solving cooperative prob...
In the following paper we present a new algorithm for cooperative reinforcement learning in multi-ag...
Creating coordinated multiagent policies in environments with un-certainty is a challenging problem,...
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
The problem of coordination in cooperative multiagent systems has been widely studied in the literat...
We report on an investigation of reinforcement learning techniques for the learning of coordination ...
We report on an investigation of reinforcement learning techniques for the learning of coordination...
We report on an investigation of reinforcement learning tech-niques for the learning of coordination...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Abstract—Multi-agent systems (MAS) are a field of study of growing interest in a variety of domains ...
One of the main problems in cooperative multiagent learning is that the joint action space is expone...
Multi-agent reinforcement learning (MARL) has become a prevalent method for solving cooperative prob...
In the following paper we present a new algorithm for cooperative reinforcement learning in multi-ag...
Creating coordinated multiagent policies in environments with un-certainty is a challenging problem,...
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
One of the important issues in intelligent systems and robotics is to develop an efficient method to...
The problem of coordination in cooperative multiagent systems has been widely studied in the literat...