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Discovering Hierarchy in Reinforcement Learning: Automatic Modelling of Task-hierarchies by Machines Through Sense-act Interactions with Their Environments
Bernhard Hengst
Discovering Hierarchy in Reinforcement Learning: Automatic Modelling of Task-hierarchies by Machines Through Sense-act Interactions with Their Environments
Bernhard Hengst
We are relying more and more on machines to perform tasks that were previously the sole domain of humans. There is a need to make machines more self-adaptable and for them to set their own sub-goals. Designing machines that can make sense of the world they inhabit is still an open research problem. Fortunately many complex environments exhibit structure that can be modelled as an inter-related set of subsystems. Subsystems are often repetitive in time and space and reoccur many times as components of different tasks. A machine may be able to learn how to tackle larger problems if it can successfully find and exploit this repetition. Evidence suggests that a bottom up approach, that recursively finds building-blocks at one level of abstraction and uses them at the next level, makes learning in many complex environments tractable. This book describes a machine learning algorithm called HEXQ that automatically discovers hierarchical structure in its environment purely through sense-act interactions, setting its own sub-goals and solving decision problems using reinforcement learning.
Mídia | Livros Paperback Book (Livro de capa flexível e brochura) |
Lançado | 25 de setembro de 2008 |
ISBN13 | 9783639059243 |
Editoras | VDM Verlag |
Páginas | 196 |
Dimensões | 150 × 11 × 225 mm · 272 g |
Idioma | English |
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