Discovering Hierarchy in Reinforcement Learning: Automatic Modelling of Task-hierarchies by Machines Through Sense-act Interactions with Their Environments - Bernhard Hengst - Books - VDM Verlag - 9783639059243 - September 25, 2008
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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

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Discovering Hierarchy in Reinforcement Learning: Automatic Modelling of Task-hierarchies by Machines Through Sense-act Interactions with Their Environments

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.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released September 25, 2008
ISBN13 9783639059243
Publishers VDM Verlag
Pages 196
Dimensions 150 × 11 × 225 mm   ·   272 g
Language English