peer reviewedLearning in multiagent systems suffers from the fact that both the state and the action space scale exponentially with the number of agents. In this paper we are interested in using Q-learning to learn the coordinated actions of a group of cooperative agents, using a sparse representation of the joint stateaction space of the agents. We first examine a compact representation in which the agents need to explicitly coordinate their actions only in a predefined set of states. Next, we use a coordination-graph approach in which we represent the Q-values by value rules that specify the coordination dependencies of the agents at particular states. We show how Q-learning can be efficiently applied to learn a coordinated policy for the...
International audienceMulti-agent systems (MAS) are a field of study of growing interest in a variet...
Research on multi-robot systems has demonstrated promising results in manifold applications and doma...
The hierarchical organisation of distributed systems can provide an efficient decomposition for mach...
peer reviewedLearning in multiagent systems suffers from the fact that both the state and the action...
One of the main problems in cooperative multiagent learning is that the joint action space is expone...
Creating coordinated multiagent policies in environments with un-certainty is a challenging problem,...
peer reviewedIn this article we describe a set of scalable techniques for learning the behavior of a...
Although multi-agent reinforcement learning (MARL) is a promising method for learning a collaborativ...
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...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
peer reviewedWe describe Utile Coordination, an algorithm that allows a multiagent system to learn w...
International audienceMulti-agent systems (MAS) are a field of study of growing interest in a variet...
Research on multi-robot systems has demonstrated promising results in manifold applications and doma...
The hierarchical organisation of distributed systems can provide an efficient decomposition for mach...
peer reviewedLearning in multiagent systems suffers from the fact that both the state and the action...
One of the main problems in cooperative multiagent learning is that the joint action space is expone...
Creating coordinated multiagent policies in environments with un-certainty is a challenging problem,...
peer reviewedIn this article we describe a set of scalable techniques for learning the behavior of a...
Although multi-agent reinforcement learning (MARL) is a promising method for learning a collaborativ...
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...
We present a conceptual framework for creating Qlearning-based algorithms that converge to optimal e...
Research Doctorate - Doctor of Philosophy (PhD)Machine learning in multi-agent domains poses several...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
peer reviewedWe describe Utile Coordination, an algorithm that allows a multiagent system to learn w...
International audienceMulti-agent systems (MAS) are a field of study of growing interest in a variet...
Research on multi-robot systems has demonstrated promising results in manifold applications and doma...
The hierarchical organisation of distributed systems can provide an efficient decomposition for mach...