Relational reinforcement learning is a promising direction within reinforcement learning research. It upgrades reinforcement learning techniques by using relational representations for states, actions, and learned value-functions or policies to allow natural representations and abstractions of complex tasks. Multi-agent systems are characterized by their relational structure and present a good example of a complex task. In this paper, we show how relational reinforcement learning could be a useful tool for learning in multi-agent systems.We study this approach in more detail on one important aspect of multi-agent systems, i.e., on learning a communication policy for cooperative systems (e.g., resource distribution). Communication between ag...
In recent years, there has been a growing interest in using rich representations such as relational ...
Transfer learning is an inherent aspect of human learning. When humans learn to perform a task, we r...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
Relational reinforcement learning is a promising new direction within reinforcement learning researc...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
In this paper we report on using a relational state space in multi-agent reinforcement learning. The...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
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...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
In recent years, there has been a growing interest in using rich representations such as relational...
Humans perceive the world in terms of objects and relations between them. In fact, for any given pai...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
In recent years, there has been a growing interest in using rich representations such as relational ...
Transfer learning is an inherent aspect of human learning. When humans learn to perform a task, we r...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...
Relational reinforcement learning is a promising new direction within reinforcement learning researc...
Relational reinforcement learning is a promising direction within reinforcement learning research. I...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
In this paper we report on using a relational state space in multi-agent reinforcement learning. The...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
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...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
In recent years, there has been a growing interest in using rich representations such as relational...
Humans perceive the world in terms of objects and relations between them. In fact, for any given pai...
This paper is devoted to the problem of reinforcement learning in multi-agent systems. Multi-agent s...
In recent years, there has been a growing interest in using rich representations such as relational ...
Transfer learning is an inherent aspect of human learning. When humans learn to perform a task, we r...
AbstractA major concern in multi-agent coordination is how to select algorithms that can lead agents...