Sparse reward games, such as the infamous Montezuma’s Revenge, pose a significant challenge for Reinforcement Learning (RL) agents. Hierarchical RL, which promotes efficient exploration via subgoals, has shown promise in these games. However, existing agents rely either on human domain knowledge or slow autonomous methods to derive suitable subgoals. In this work, we describe a new, autonomous approach for deriving subgoals from raw pixels that is more efficient than competing methods. We propose a novel intrinsic reward scheme for exploiting the derived subgoals, applying it to three Atari games with sparse rewards. Our agent’s performance is comparable to that of state-of-the-art methods, demonstrating the usefulness of the subgoals found
Abstract: In Reinforcement Learning, Intrinsic Motivation motivates directed behaviors through a wid...
A fundamental challenge for reinforcement learning (RL) is how to achieve effcient exploration in in...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Sparse reward games, such as the infamous Montezumas Revenge, pose a significant challenge for Reinf...
Autonomous systems are often difficult to program. Reinforcement learning (RL) is an attractive alte...
Sparse reward is one of the biggest challenges in reinforcement learning (RL). In this paper, we pro...
Solving sparse-reward environments is one of the most considerable challenges for state-of-the-art ...
An ability to adjust to changing environments and unforeseen circumstances is likely to be an import...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
Common approaches to Reinforcement Learning (RL) are seriously challenged by large-scale application...
Exploration under sparse rewards is a key challenge for multi-agent reinforcement learning problems....
In many real-world problems, reward signals received by agents are delayed or sparse, which makes it...
Human knowledge can reduce the number of iterations required to learn in reinforcement learning. Tho...
In computer games, one use case for artificial intelligence is used to create interesting problems f...
Abstract: In Reinforcement Learning, Intrinsic Motivation motivates directed behaviors through a wid...
A fundamental challenge for reinforcement learning (RL) is how to achieve effcient exploration in in...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Sparse reward games, such as the infamous Montezumas Revenge, pose a significant challenge for Reinf...
Autonomous systems are often difficult to program. Reinforcement learning (RL) is an attractive alte...
Sparse reward is one of the biggest challenges in reinforcement learning (RL). In this paper, we pro...
Solving sparse-reward environments is one of the most considerable challenges for state-of-the-art ...
An ability to adjust to changing environments and unforeseen circumstances is likely to be an import...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
Common approaches to Reinforcement Learning (RL) are seriously challenged by large-scale application...
Exploration under sparse rewards is a key challenge for multi-agent reinforcement learning problems....
In many real-world problems, reward signals received by agents are delayed or sparse, which makes it...
Human knowledge can reduce the number of iterations required to learn in reinforcement learning. Tho...
In computer games, one use case for artificial intelligence is used to create interesting problems f...
Abstract: In Reinforcement Learning, Intrinsic Motivation motivates directed behaviors through a wid...
A fundamental challenge for reinforcement learning (RL) is how to achieve effcient exploration in in...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...