We consider sequential decision making problems under uncertainty, in which a user has a general idea of the task to achieve, and gives advice to an agent in charge of computing an optimal policy. Many different notions of advice have been proposed in somewhat different settings, especially in the field of inverse reinforcement learning and for resolution of Markov Decision Problems with Imprecise Rewards. Two key questions are whether the advice required by a specific method is natural for the user to give, and how much advice is needed for the agent to compute a good policy, as evaluated by the user. We give a unified view of a number of proposals made in the literature, and propose a new notion of advice, which corresponds to a user tell...
This paper provides a novel insight into human cognition by running a series of experiments on indiv...
Sequential decision-making under uncertainty is an important branch of artificial intelligence resea...
Decision-making from potentially unreliable advice is an important problem in many settings, such as...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
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 ...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
We consider the problem of creating assistants that can help agents solve new sequential decision pr...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
We study a class of reinforcement learning tasks in which the agent receives its reward for complex,...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
Sequential decision-making under uncertainty is an important branch of artificial intelligence resea...
Decision-making from potentially unreliable advice is an important problem in many settings, such as...
This paper provides a novel insight into human cognition by running a series of experiments on indiv...
Sequential decision-making under uncertainty is an important branch of artificial intelligence resea...
Decision-making from potentially unreliable advice is an important problem in many settings, such as...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
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 ...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
We consider the problem of creating assistants that can help agents solve new sequential decision pr...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
We study a class of reinforcement learning tasks in which the agent receives its reward for complex,...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
Sequential decision-making under uncertainty is an important branch of artificial intelligence resea...
Decision-making from potentially unreliable advice is an important problem in many settings, such as...
This paper provides a novel insight into human cognition by running a series of experiments on indiv...
Sequential decision-making under uncertainty is an important branch of artificial intelligence resea...
Decision-making from potentially unreliable advice is an important problem in many settings, such as...