We propose a model-based approach to hierarchical reinforcement learning that exploits shared knowledge and selective execution at different levels of abstraction, to efficiently solve large, complex problems. Our framework adopts a new transition dynamics learning algorithm that identifies the common action-feature combinations of the subtasks, and evaluates the subtask execution choices through simulation. The framework is sample efficient, and tolerates uncertain and incomplete problem characterization of the subtasks. We test the framework on common benchmark problems and complex simulated robotic environments. It compares favorably against the state-of-the-art algorithms, and scales well in very large problems
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
Hierarchical task decompositions play an essential role in the design of complex simulation and deci...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
National Research Foundation (NRF) Singapore under SMART and Future Mobility; Ministry of Education,...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
Common approaches to Reinforcement Learning (RL) are seriously challenged by large-scale application...
Factored representations, model-based learning, and hierarchies are well-studied techniques for impr...
A hierarchical representation of the input-output transition function in a learning system is sugges...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
Learning, has been very successful at describing how animals and humans adjust their actions so as t...
A hierarchical representation of the input-output transition function in a learning system is sugges...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
Hierarchical task decompositions play an essential role in the design of complex simulation and deci...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
National Research Foundation (NRF) Singapore under SMART and Future Mobility; Ministry of Education,...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
Common approaches to Reinforcement Learning (RL) are seriously challenged by large-scale application...
Factored representations, model-based learning, and hierarchies are well-studied techniques for impr...
A hierarchical representation of the input-output transition function in a learning system is sugges...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
Learning, has been very successful at describing how animals and humans adjust their actions so as t...
A hierarchical representation of the input-output transition function in a learning system is sugges...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...
Hierarchical task decompositions play an essential role in the design of complex simulation and deci...
There is an increasing interest in Reinforcement Learning to solve new and more challenging problems...