Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditional algorithms are unable to handle large amounts of data coming from the robot’s sensors, require long training times, and use dis-crete actions. This work introduces TS-RRLCA, a two stage method to tackle these problems. In the first stage, low-level data coming from the robot’s sensors is transformed into a more natural, relational representation based on rooms, walls, corners, doors and obstacles, significantly reducing the state space. We use this representation along with Be-havioural Cloning, i.e., traces provided by the user; to learn, in few iterations, a relational control policy with discrete actions which can be re-used in differ...
Reinforcement learning has developed into a primary approach for learning control strategies for aut...
Relational Reinforcement Learning (RRL) is a subfield of machine learning in which a learning agent ...
Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, i...
Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditi...
Dynamic control tasks are good candidates for the application of reinforcement learning techniques. ...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Reinforcement learning, and Q-learning in particular, encounter two major problems when dealing with...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
As most action generation problems of autonomous robots can be phrased in terms of sequential decisi...
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...
Relational Reinforcement Learning (RRL) is a subfield of machine learning in which a learning agent ...
Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, i...
Reinforcement Learning is a commonly used technique for learning tasks in robotics, however, traditi...
Dynamic control tasks are good candidates for the application of reinforcement learning techniques. ...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Reinforcement learning, and Q-learning in particular, encounter two major problems when dealing with...
Abstract. Reinforcement learning, and Q-learning in particular, encounter two major problems when de...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
As most action generation problems of autonomous robots can be phrased in terms of sequential decisi...
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...
Relational Reinforcement Learning (RRL) is a subfield of machine learning in which a learning agent ...
Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, i...