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Multiagent Coordination A Reinforcement Learning Approach Arup Kumar Sadhu

  • SKU: BELL-46086404
Multiagent Coordination A Reinforcement Learning Approach Arup Kumar Sadhu
$ 31.00 $ 45.00 (-31%)

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Multiagent Coordination A Reinforcement Learning Approach Arup Kumar Sadhu instant download after payment.

Publisher: John Wiley & Sons
File Extension: EPUB
File size: 18.71 MB
Pages: 581
Author: Arup Kumar Sadhu, Amit Konar
ISBN: 1119699033
Language: English
Year: 2021

Product desciption

Multiagent Coordination A Reinforcement Learning Approach Arup Kumar Sadhu by Arup Kumar Sadhu, Amit Konar 1119699033 instant download after payment.

Discover the latest developments in multi-robot coordination techniques with this insightful and original resource Multi-Agent Coordination: A Reinforcement Learning Approach delivers a comprehensive, insightful, and unique treatment of the development of multi-robot coordination algorithms with minimal computational burden and reduced storage requirements when compared to traditional algorithms. The accomplished academics, engineers, and authors provide readers with both a high-level introduction to, and overview of, multi-robot coordination, and in-depth analyses of learning-based planning algorithms. You'll learn about how to accelerate the exploration of the team-goal and alternative approaches to speeding up the convergence of TMAQL by identifying the preferred joint action for the team. The authors also propose novel approaches to consensus Q-learning that address the equilibrium selection problem and a new way of evaluating the threshold value for uniting empires without imposing any significant computation overhead. Finally, the book concludes with an examination of the likely direction of future research in this rapidly developing field. Readers will discover cutting-edge techniques for multi-agent coordination, including: An introduction to multi-agent coordination by reinforcement learning and evolutionary algorithms, including topics like the Nash equilibrium and correlated equilibrium Improving convergence speed of multi-agent Q-learning for cooperative task planning Consensus Q-learning for multi-agent cooperative planning The efficient computing of correlated equilibrium for cooperative q-learning based multi-agent planning A modified imperialist competitive algorithm for multi-agent stick-carrying applications Perfect for academics, engineers, and professionals who regularly work with multi-agent learning algorithms, Multi-Agent Coordination: A Reinforcement Learning Approach also belongs on the bookshelves of anyone with an advanced interest in machine learning and artificial intelligence as it applies to the field of cooperative or competitive robotics.

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