Humans use prior knowledge to efficiently solve novel tasks, but how they structure past knowledge during learning to enable such fast generalization is not well understood. We recently proposed that hierarchical state abstraction enabled generalization of simple one-step rules, by inferring context clusters for each rule. However, humans' daily tasks are often temporally extended, and necessitate more complex multi-step, hierarchically structured strategies. The options framework in hierarchical reinforcement learning provides a theoretical framework for representing such transferable strategies. Options are abstract multi-step policies, assembled from simpler one-step actions or other options, that can represent meaningful reusable strate...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
Learning, planning, and representing knowledge at multiple levels of temporal abstraction are key, l...
Humans have the exceptional ability to efficiently structure past knowledge during learning to enabl...
Humans have the exceptional ability to efficiently structure past knowledge during learning to enabl...
Abstract. Reinforcement learning is bedeviled by the curse of dimensionality: the number of paramete...
Learning temporal abstractions which are partial solutions to a task and could be reused for other s...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
The idea of temporal abstraction, i.e. learning, planning and representing the world at multiple tim...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
Abstraction plays an important role in the generalisation of knowledge and skills and is key to samp...
Hierarchical reinforcement learning has focused on discovering temporally extended actions (options)...
Humans have the astonishing capacity to quickly adapt to varying environmental demands and reach com...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
Learning, planning, and representing knowledge at multiple levels of temporal abstraction are key, l...
Humans have the exceptional ability to efficiently structure past knowledge during learning to enabl...
Humans have the exceptional ability to efficiently structure past knowledge during learning to enabl...
Abstract. Reinforcement learning is bedeviled by the curse of dimensionality: the number of paramete...
Learning temporal abstractions which are partial solutions to a task and could be reused for other s...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
The idea of temporal abstraction, i.e. learning, planning and representing the world at multiple tim...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
Abstraction plays an important role in the generalisation of knowledge and skills and is key to samp...
Hierarchical reinforcement learning has focused on discovering temporally extended actions (options)...
Humans have the astonishing capacity to quickly adapt to varying environmental demands and reach com...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
We present a new method for automatically creating useful temporal abstractions in reinforcement lea...
Learning, planning, and representing knowledge at multiple levels of temporal abstraction are key, l...