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E-book
Author Meyn, S. P. (Sean P.), author.

Title Control systems and reinforcement learning / Sean Meyn
Published Cambridge, United Kingdom ; New York, NY : Cambridge University Press, 2022
©2022

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Description 1 online resource (xv, 435 pages) : illustrations
Contents Control crash course -- Optimal control -- ODE methods for algorithm design -- Value function approximations -- Markov chains -- Stochastic control -- Stochastic approximation -- Temporal difference methods -- Setting the stage, return of the actors
Summary "A high school student can create deep Q-learning code to control her robot, without any understanding of the meaning of "deep" or "Q", or why the code sometimes fails. This book is designed to explain the science behind reinforcement learning and optimal control in a way that is accessible to students with a background in calculus and matrix algebra. A unique focus is algorithm design to obtain the fastest possible speed of convergence for learning algorithms, along with insight into why reinforcement learning sometimes fails. Advanced stochastic process theory is avoided at the start by substituting random exploration with more intuitive deterministic probing for learning. Once these ideas are understood, it is not difficult to master techniques rooted in stochastic control. These topics are covered in the second part of the book, starting with Markov chain theory and ending with a fresh look at actor-critic methods for reinforcement learning"-- Provided by publisher
Bibliography Includes bibliographical references and index
Notes Description based on online resource; title from digital title page (viewed on May 23, 2022)
Subject Reinforcement learning.
Mathematical optimization.
Control theory.
COMPUTERS -- Artificial Intelligence -- Computer Vision & Pattern Recognition.
Control theory
Mathematical optimization
Reinforcement learning
Form Electronic book
LC no. 2021063032
ISBN 9781009051873
1009051873