Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, in-depth ex-ploration is usually required and the actions have to be known in advance. Thus, we propose a novel algorithm that integrates the option of requesting teacher demonstrations to learn new domains with fewer action executions and no previous knowledge. Demonstrations allow new actions to be learned and they greatly reduce the amount of explo-ration required, but they are only requested when they are expected to yield a significant improvement because the teacher’s time is considered to be more valuable than the robot’s time. Moreover, selecting the appropriate action to demonstrate is not an easy task, and thus some guidance is provi...
We consider robot learning in the context of shared autonomy, where control of the system can switch...
International audienceUsing direct reinforcement learning (RL) to accomplish a task can be very ine ...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, i...
Reinforcement learning (RL) is a common paradigm for learning tasks in robotics. However, a lot of e...
Reinforcement learning (RL) is a common paradigm for learning tasks in robotics. However, a lot of e...
Learning by demonstration can be a powerful and natural tool for developing robot control policies. ...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
<p>Reinforcement learning offers to robotics a framework and set of tools for the design of sophisti...
As robots become more commonplace within society, the need for tools that enable non-robotics-expert...
Learning by demonstration can be a powerful and natural tool for developing robot control policies. ...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
Robots are destined to move beyond the caged factory floors towards domains where they will be inter...
We consider robot learning in the context of shared autonomy, where control of the system can switch...
International audienceUsing direct reinforcement learning (RL) to accomplish a task can be very ine ...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
Model-based reinforcement learning is a powerful paradigm for learning tasks in robotics. However, i...
Reinforcement learning (RL) is a common paradigm for learning tasks in robotics. However, a lot of e...
Reinforcement learning (RL) is a common paradigm for learning tasks in robotics. However, a lot of e...
Learning by demonstration can be a powerful and natural tool for developing robot control policies. ...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
<p>Reinforcement learning offers to robotics a framework and set of tools for the design of sophisti...
As robots become more commonplace within society, the need for tools that enable non-robotics-expert...
Learning by demonstration can be a powerful and natural tool for developing robot control policies. ...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
The goal of robot learning from demonstration is to have a robot learn from watching a demonstration...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
Robots are destined to move beyond the caged factory floors towards domains where they will be inter...
We consider robot learning in the context of shared autonomy, where control of the system can switch...
International audienceUsing direct reinforcement learning (RL) to accomplish a task can be very ine ...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...