We examine application of relational learning methods to reinforcement learning in spatial navigation tasks. Specifically, we consider a goalseeking agent with noisy control actions embedded in an environment with strong topological structure. While formally a Markov decision process (MDP), this task possesses special structure derived from the underlying topology that can be exploited to speed learning. We describe relational policies for such environments that are relocatable by virtue of being parameterized solely in terms of the relations (distance and direction) between the agent’s current state and the goal state. We demonstrate that this formulation yields significant learning improvements in completely homogeneous environments for w...
AI researchers have long studied algorithms for plan-ning and learning-to-plan within highly structu...
Abstract. Learning and behaviour of mobile robots faces limitations. In reinforcement learning, for ...
Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditi...
The field of reinforcement learning (RL) has achieved great strides in learning control knowledge fr...
Autonomous agents that act in the real world utilizing sensory input greatly rely on the ability to ...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
© Springer-Verlag Berlin Heidelberg 1998. Relational reinforcement learning is presented, a learning...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
In this paper we report on using a relational state space in multi-agent reinforcement learning. The...
Navigation is one of the fundamental tasks for a mobile robot. The majority of path planning approac...
We consider the problem of computing general policies for decision-theoretic planning problems with ...
AI researchers have long studied algorithms for plan-ning and learning-to-plan within highly structu...
Abstract. Learning and behaviour of mobile robots faces limitations. In reinforcement learning, for ...
Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditi...
The field of reinforcement learning (RL) has achieved great strides in learning control knowledge fr...
Autonomous agents that act in the real world utilizing sensory input greatly rely on the ability to ...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
© Springer-Verlag Berlin Heidelberg 1998. Relational reinforcement learning is presented, a learning...
Abstract. In reinforcement learning, an agent tries to learn a policy, i.e., how to select an action...
Abstract. In this paper we report on using a relational state space in multi-agent reinforcement lea...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
In this paper we report on using a relational state space in multi-agent reinforcement learning. The...
Navigation is one of the fundamental tasks for a mobile robot. The majority of path planning approac...
We consider the problem of computing general policies for decision-theoretic planning problems with ...
AI researchers have long studied algorithms for plan-ning and learning-to-plan within highly structu...
Abstract. Learning and behaviour of mobile robots faces limitations. In reinforcement learning, for ...
Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditi...