Action advising is a peer-to-peer knowledge exchange technique built on the teacher-student paradigm to alleviate the sample inefficiency problem in deep reinforcement learning. Recently proposed student-initiated approaches have obtained promising results. However, due to being in the early stages of development, these also have some substantial shortcomings. One of the abilities that are absent in the current methods is further utilising advice by reusing, which is especially crucial in the practical settings considering the budget constraints in peer-to-peer interactions. In this study, we present an approach to enable the student agent to imitate previously acquired advice to reuse them directly in its exploration policy, without any in...
The teacher-student framework aims to improve the sample efficiency of RL algorithms by deploying an...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
An important issue in reinforcement learning is how to incorporate expert knowledge in a principled ...
Deep Reinforcement Learning (RL) algorithms can solve complex sequential decision-making tasks succe...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
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 ...
We address the problem of advice-taking in a given domain, in particular for building a game-playing...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
The promise of imitation is to facilitate learning by allowing the learner to ob-serve a teacher in ...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
The problem we consider in this paper is reinforcement learning with value advice. In this setting, ...
We consider the problem of incorporating end-user advice into reinforcement learning (RL). In our se...
We consider the problem of incorporating end-user advice into re-inforcement learning (RL). In our s...
The teacher-student framework aims to improve the sample efficiency of RL algorithms by deploying an...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
An important issue in reinforcement learning is how to incorporate expert knowledge in a principled ...
Deep Reinforcement Learning (RL) algorithms can solve complex sequential decision-making tasks succe...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
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 ...
We address the problem of advice-taking in a given domain, in particular for building a game-playing...
Intelligent systems that interact with humans typically require demonstrations and/or advice from th...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
The promise of imitation is to facilitate learning by allowing the learner to ob-serve a teacher in ...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
The problem we consider in this paper is reinforcement learning with value advice. In this setting, ...
We consider the problem of incorporating end-user advice into reinforcement learning (RL). In our se...
We consider the problem of incorporating end-user advice into re-inforcement learning (RL). In our s...
The teacher-student framework aims to improve the sample efficiency of RL algorithms by deploying an...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
An important issue in reinforcement learning is how to incorporate expert knowledge in a principled ...