One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Because human advice is expensive, the central question in advice-based reinforcement learning is, how to decide in which states the agent should ask for advice. To approach this challenge, various advice strategies have been proposed. Although all of these strategies distribute advice more efficiently than naive strategies, they rely solely on the agent's estimate of the action-value function, and therefore, are rather inefficient when this estimate is not accurate, in particular, in the early stages of the learning process. To address this weakness, we present an approach to advice-based RL, in which the human’s role is not limited to giving...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
We study a class of reinforcement learning tasks in which the agent receives its reward for complex,...
Action advising is a peer-to-peer knowledge exchange technique built on the teacher-student paradigm...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
An important issue in reinforcement learning is how to incorporate expert knowledge in a principled ...
Although Reinforcement Learning (RL) has been one of the most successful approaches for learning in ...
Although Reinforcement Learning (RL) has been one of the most successful approaches for learning in ...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
We consider sequential decision making problems under uncertainty, in which a user has a general ide...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
We consider the problem of incorporating end-user advice into reinforcement learning (RL). In our se...
We present a novel formulation for providing ad-vice to a reinforcement learner that employs support...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
We study a class of reinforcement learning tasks in which the agent receives its reward for complex,...
Action advising is a peer-to-peer knowledge exchange technique built on the teacher-student paradigm...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
An important issue in reinforcement learning is how to incorporate expert knowledge in a principled ...
Although Reinforcement Learning (RL) has been one of the most successful approaches for learning in ...
Although Reinforcement Learning (RL) has been one of the most successful approaches for learning in ...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
We consider sequential decision making problems under uncertainty, in which a user has a general ide...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
We consider the problem of incorporating end-user advice into reinforcement learning (RL). In our se...
We present a novel formulation for providing ad-vice to a reinforcement learner that employs support...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
We study a class of reinforcement learning tasks in which the agent receives its reward for complex,...
Action advising is a peer-to-peer knowledge exchange technique built on the teacher-student paradigm...