Publisher Copyright: © 2022 by the authors. Licensee MDPI, Basel, Switzerland.Reinforcement learning with sparse rewards is still an open challenge. Classic methods rely on getting feedback via extrinsic rewards to train the agent, and in situations where this occurs very rarely the agent learns slowly or cannot learn at all. Similarly, if the agent receives also rewards that create suboptimal modes of the objective function, it will likely prematurely stop exploring. More recent methods add auxiliary intrinsic rewards to encourage exploration. However, auxiliary rewards lead to a non-stationary target for the Q-function. In this paper, we present a novel approach that (1) plans exploration actions far into the future by using a long-term v...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
Exploration plays a fundamental role in any active learning system. This study evaluates the role of...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...
Reinforcement learning with sparse rewards is still an open challenge. Classic methods rely on getti...
This paper reviews exploration techniques in deep reinforcement learning. Exploration techniques are...
Over the course of the last decade, the framework of reinforcement learning has developed into a pro...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
International audienceRealistic environments often provide agents with very limited feedback. When t...
Sparse reward is one of the biggest challenges in reinforcement learning (RL). In this paper, we pro...
Reinforcement learning (RL) aims to learn optimal behaviors for agents to maximize cumulative reward...
Dealing with sparse rewards is a longstanding challenge in reinforcement learning. The recent use of...
Learning optimal policies in sparse rewards settings is difficult as the learning agent has little t...
Uploaded version with minor typographic errors corrected, per request of the Grad office, 12/13/2022...
Improving sample efficiency is a key challenge in reinforcement learning, especially in environments...
An important problem in reinforcement learning is the exploration-exploitation dilemma. Especially f...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
Exploration plays a fundamental role in any active learning system. This study evaluates the role of...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...
Reinforcement learning with sparse rewards is still an open challenge. Classic methods rely on getti...
This paper reviews exploration techniques in deep reinforcement learning. Exploration techniques are...
Over the course of the last decade, the framework of reinforcement learning has developed into a pro...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
International audienceRealistic environments often provide agents with very limited feedback. When t...
Sparse reward is one of the biggest challenges in reinforcement learning (RL). In this paper, we pro...
Reinforcement learning (RL) aims to learn optimal behaviors for agents to maximize cumulative reward...
Dealing with sparse rewards is a longstanding challenge in reinforcement learning. The recent use of...
Learning optimal policies in sparse rewards settings is difficult as the learning agent has little t...
Uploaded version with minor typographic errors corrected, per request of the Grad office, 12/13/2022...
Improving sample efficiency is a key challenge in reinforcement learning, especially in environments...
An important problem in reinforcement learning is the exploration-exploitation dilemma. Especially f...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
Exploration plays a fundamental role in any active learning system. This study evaluates the role of...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...