In this paper we report on using a relational state space in multi-agent reinforcement learning. There is growing evidence in the Reinforcement Learning research community that a relational representation of the state space has many benefits over a propositional one. Complex tasks as planning or information retrieval on the web can be represented more naturally in relational form. Yet, this relational structure has not been exploited for multi-agent reinforcement learning tasks and has only been studied in a single agent context so far. In this paper we explore the powerful possibilities of using Relational Reinforcement Learning (RRL) in complex multi-agent coordination tasks. More precisely, we consider an abstract multi-state coordinatio...
Abstract Multi-agent systems are rapidly nding applications in a variety of domains, including robo...
In recent years, there has been a growing interest in using rich representations such as relational...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
Learning in a partially observable and nonstationary environment is still one of the challenging pro...
The exploration-exploitation tradeoff is crucial to reinforcement-learning (RL) agents, and a signi...
Reinforcement learning has developed into a primary approach for learning control strategies for aut...
Reinforcement learning has developed into a primary approach for learning control strategies for aut...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
Abstract Multi-agent systems are rapidly nding applications in a variety of domains, including robo...
In recent years, there has been a growing interest in using rich representations such as relational...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
Learning in a partially observable and nonstationary environment is still one of the challenging pro...
The exploration-exploitation tradeoff is crucial to reinforcement-learning (RL) agents, and a signi...
Reinforcement learning has developed into a primary approach for learning control strategies for aut...
Reinforcement learning has developed into a primary approach for learning control strategies for aut...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
Abstract Multi-agent systems are rapidly nding applications in a variety of domains, including robo...
In recent years, there has been a growing interest in using rich representations such as relational...
With great success in Reinforcement Learning’s application to a suite of single-agent environments, ...