In this paper, a hierarchical reinforcement learning (HRL) architecture, namely a “Hierarchical Deep Deterministic Policy Gradient (HDDPG)” has been proposed and studied. A HDDPG utilizes manager and worker formation similar to other HRL structures. However, unlike others, the HDDPG enables sharing an identical environment and state among workers and managers, while a unique reward system is required for each Deep Deterministic Policy Gradient (DDPG) agent. Therefore, the HDDPG allows easy structural expansion with probabilistic action selection of a worker by the manager. Due to its innate structural advantage, the HDDPG has a merit in building a general AI to deal with a complex time-horizon tasks with various conflicting sub-goals. The e...
Abstract. For complex tasks, such as manipulation and robot navi-gation, reinforcement learning (RL)...
Learning an optimal policy from a multi-modal reward function is a challenging problem in reinforcem...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...
In this paper, a hierarchical reinforcement learning (HRL) architecture, namely a “Hierar chical Dee...
Reinforcement learning (RL) is an area of Machine Learning (ML) concerned with learning how a softwa...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This dissertation investigates the use of hierarchy and abstraction as a means of solving complex se...
Solutions to real world robotic tasks often require complex behaviors in high dimensional continuou...
Two common approaches to sequential decision-making are AI planning (AIP) and reinforcement learning...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
Abstract. For complex tasks, such as manipulation and robot navi-gation, reinforcement learning (RL)...
Learning an optimal policy from a multi-modal reward function is a challenging problem in reinforcem...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...
In this paper, a hierarchical reinforcement learning (HRL) architecture, namely a “Hierar chical Dee...
Reinforcement learning (RL) is an area of Machine Learning (ML) concerned with learning how a softwa...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
This dissertation investigates the use of hierarchy and abstraction as a means of solving complex se...
Solutions to real world robotic tasks often require complex behaviors in high dimensional continuou...
Two common approaches to sequential decision-making are AI planning (AIP) and reinforcement learning...
In this paper, the application of the policy gradient Reinforcement Learning-based (RL) method for o...
Abstract. For complex tasks, such as manipulation and robot navi-gation, reinforcement learning (RL)...
Learning an optimal policy from a multi-modal reward function is a challenging problem in reinforcem...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...