Multi-Agent Machine Learning: A Reinforcement Approach

Multi-Agent Machine Learning: A Reinforcement Approach

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(as of Nov 17, 2024 18:26:34 UTC – Details)


The book begins with a chapter on traditional methods of supervised learning, covering recursive least squares learning, mean square error methods, and stochastic approximation. Chapter 2 covers single agent reinforcement learning. Topics include learning value functions, Markov games, and TD learning with eligibility traces. Chapter 3 discusses two player games including two player matrix games with both pure and mixed strategies. Numerous algorithms and examples are presented. Chapter 4 covers learning in multi-player games, stochastic games, and Markov games, focusing on learning multi-player grid games―two player grid games, Q-learning, and Nash Q-learning. Chapter 5 discusses differential games, including multi player differential games, actor critique structure, adaptive fuzzy control and fuzzy interference systems, the evader pursuit game, and the defending a territory games. Chapter 6 discusses new ideas on learning within robotic swarms and the innovative idea of the evolution of personality traits.

• Framework for understanding a variety of methods and approaches in multi-agent machine learning.

• Discusses methods of reinforcement learning such as a number of forms of multi-agent Q-learning

• Applicable to research professors and graduate students studying electrical and computer engineering, computer science, and mechanical and aerospace engineering

ASIN ‏ : ‎ 111836208X
Publisher ‏ : ‎ Wiley; 1st edition (August 11, 2014)
Language ‏ : ‎ English
Hardcover ‏ : ‎ 256 pages
ISBN-10 ‏ : ‎ 9781118362082
ISBN-13 ‏ : ‎ 978-1118362082
Item Weight ‏ : ‎ 1.05 pounds
Dimensions ‏ : ‎ 6.2 x 0.7 x 9.4 inches


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