Fr. 64.00

Efficient Reinforcement Learning in High Dimensional Domains - An approach to solve complex real world and engineeing problems

English · Paperback / Softback

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Description

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This book presents development of efficient reinforcement learning methods in a postgraduate research. A reinforcement learning agent tries every state-action pair to find the optimal policy without prior knowledge about the domain. In large domains visiting every state-action pair is not feasible by an agent, therefore standard reinforcement learning approach is not applicable in solving many real world problems. Three new methods are proposed to make the learning efficient according to the characteristics of the problems: Task-Oriented Reinforcement Learning reduces the problem size by viewing it from the task's viewpoint that clarifies task relevant state variables. Symmetrical-Actions Reinforcement Leaning reduces the size of a learning problem by exploiting partial symmetry over action relevant state variables and representing actions values by a single function. Coordinated Multiagent Reinforcement Learning technique uses coordinator-agent hierarchy to keep the size of individual learning problems small. Depending on problem characteristics all or any of these methods can be applied to solve a problem efficiently using reinforcement learning.

About the author










Dr. Kamal studied in KUET, Bangladesh and Kyushu University, Japan. In his academic profession he worked in universities including KUET, Kyushu University, IIUM Malaysia and The University of Tokyo. His research interests include reinforcement learning, intelligent control systems, model predictive control and intelligent transportation systems.

Product details

Authors Md Abdus Samad Kamal, Md. Abdus Samad Kamal
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 05.01.2012
 
EAN 9783846555712
ISBN 978-3-8465-5571-2
No. of pages 96
Dimensions 150 mm x 220 mm x 6 mm
Weight 145 g
Subject Natural sciences, medicine, IT, technology > IT, data processing > IT

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