Reinforcement Learning is carried out on-line, through trial-and-error interactions of the agent with the environment, which can be very time consuming when considering robots. In this paper we contribute a new learning algorithm, CFQ-Learning, which uses macro-states, a low-resolution discretisation of the state space, and a partial-policy to get around obstacles, both of them based on the complexity of the environment structure. The use of macro-states avoids convergence of algorithms, but can accelerate the learning process. In the other hand, partial-policies can guarantee that an agent fulfils its task, even through macro-state. Experiments show that the CFQ-Learning performs a good balance between policy quality and learning rate
Scaling down robots to miniature size introduces many new challenges including memory and program si...
Applying Q-Learning to multidimensional, real-valued state spaces is time-consuming in most cases. I...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Reinforcement Learning is carried out on-line, through trial-and-error interactions of the agent wit...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
This paper investigates how to make improved action selection for online policy learning in robotic ...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
Abstract. The behavior of reinforcement learning (RL) algorithms is best understood in completely ob...
A long standing goal of robotics research is to create algorithms that can automatically learn compl...
A new reinforcement learning algorithm de-signed specifically for robots and embodied sys-tems is de...
Q-learning has often been used to learn primitive behaviors, or to coordinate a limited set of motor...
In [1], we have presented the soccer robot which had learned to shoot a ball into the goal using the...
Reinforcement Learning (RL) methods enable autonomous robots to learn skills from scratch by interac...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
A new reinforcement learning algorithm designed--specifically for robots and embodied systems--is de...
Scaling down robots to miniature size introduces many new challenges including memory and program si...
Applying Q-Learning to multidimensional, real-valued state spaces is time-consuming in most cases. I...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Reinforcement Learning is carried out on-line, through trial-and-error interactions of the agent wit...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
This paper investigates how to make improved action selection for online policy learning in robotic ...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
Abstract. The behavior of reinforcement learning (RL) algorithms is best understood in completely ob...
A long standing goal of robotics research is to create algorithms that can automatically learn compl...
A new reinforcement learning algorithm de-signed specifically for robots and embodied sys-tems is de...
Q-learning has often been used to learn primitive behaviors, or to coordinate a limited set of motor...
In [1], we have presented the soccer robot which had learned to shoot a ball into the goal using the...
Reinforcement Learning (RL) methods enable autonomous robots to learn skills from scratch by interac...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
A new reinforcement learning algorithm designed--specifically for robots and embodied systems--is de...
Scaling down robots to miniature size introduces many new challenges including memory and program si...
Applying Q-Learning to multidimensional, real-valued state spaces is time-consuming in most cases. I...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...