rithm enables a human user to train a robot by providing rewards in response to past actions and anticipatory guidance to guide the selection of future actions. Past work with soft-ware agents has shown that incorporating user guidance into the policy learning process through Interactive Reinforcement Learning significantly improves the policy learning time by reducing the number of states the agent explores. We present the first study of Interactive Reinforcement Learning in real-world robotic systems. We report on four experiments that study the effects that teacher guidance and state space size have on policy learning performance. We discuss modifications made to apply Interactive Reinforcement Learning to a real-world system and show th...
For agents and robots to become more useful, they must be able to quickly learn from non-technical u...
Social interacting is a complex task for which machine learning holds particular promise. However, a...
In order for reinforcement learning systems to learn quickly in vast action spaces such as the space...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
designed for interactive supervisory input from a human teacher, several works in both robot and sof...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Robot learning problems are limited by physical constraints, which make learning successful policies...
Keeping a human in a robot learning cycle can provide many advantages to improve the learning proces...
Interactive reinforcement learning has become an important apprenticeship approach to speed up conve...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
As technology continues to evolve at a rapid pace, robots are becoming an increasingly common sight ...
The high request for autonomous human-robot interaction (HRI), combined with the potential of machin...
Off-the-shelf Reinforcement Learning (RL) algorithms suffer from slow learning performance, partly b...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
For agents and robots to become more useful, they must be able to quickly learn from non-technical u...
Social interacting is a complex task for which machine learning holds particular promise. However, a...
In order for reinforcement learning systems to learn quickly in vast action spaces such as the space...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
designed for interactive supervisory input from a human teacher, several works in both robot and sof...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Robot learning problems are limited by physical constraints, which make learning successful policies...
Keeping a human in a robot learning cycle can provide many advantages to improve the learning proces...
Interactive reinforcement learning has become an important apprenticeship approach to speed up conve...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
As technology continues to evolve at a rapid pace, robots are becoming an increasingly common sight ...
The high request for autonomous human-robot interaction (HRI), combined with the potential of machin...
Off-the-shelf Reinforcement Learning (RL) algorithms suffer from slow learning performance, partly b...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
For agents and robots to become more useful, they must be able to quickly learn from non-technical u...
Social interacting is a complex task for which machine learning holds particular promise. However, a...
In order for reinforcement learning systems to learn quickly in vast action spaces such as the space...