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Reinforcement Learning for Sequential Decision and Optimal Control

  • Textbook
  • © 2023

Overview

  • Provides a comprehensive and thorough introduction to reinforcement learning, ranging from theory to application
  • Introduce reinforcement learning from both artificial intelligence and optimal control perspectives
  • Written by a respected expert in the interdisciplinary field of industrial control and artificial intelligence

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Table of contents (12 chapters)

Keywords

About this book

Have you ever wondered how AlphaZero learns to defeat the top human Go players? Do you have any clues about how an autonomous driving system can gradually develop self-driving skills beyond normal drivers? What is the key that enables AlphaStar to make decisions in Starcraft, a notoriously difficult strategy game that has partial information and complex rules? The core mechanism underlying those recent technical breakthroughs is reinforcement learning (RL), a theory that can help an agent to develop the self-evolution ability through continuing environment interactions. In the past few years, the AI community has witnessed phenomenal success of reinforcement learning in various fields, including chess games, computer games and robotic control. RL is also considered to be a promising and powerful tool to create general artificial intelligence in the future. 

As an interdisciplinary field of trial-and-error learning and optimal control, RL resembles how humans reinforce their intelligence by interacting with the environment and provides a principled solution for sequential decision making and optimal control in large-scale and complex problems. Since RL contains a wide range of new concepts and theories, scholars may be plagued by a number of questions: What is the inherent mechanism of reinforcement learning? What is the internal connection between RL and optimal control? How has RL evolved in the past few decades, and what are the milestones? How do we choose and implement practical and effective RL algorithms for real-world scenarios? What are the key challenges that RL faces today, and how can we solve them? What is the current trend of RL research? You can find answers to all those questions in this book.

The purpose of the book is to help researchers and practitioners take a comprehensive view of RL and understand the in-depth connection between RL and optimal control. The book includes not only systematic and thorough explanations of theoretical basics but also methodical guidance of practical algorithm implementations. The book intends to provide a comprehensive coverage of both classic theories and recent achievements, and the content is carefully and logically organized, including basic topics such as the main concepts and terminologies of RL, Markov decision process (MDP), Bellman’s optimality condition, Monte Carlo learning, temporal difference learning, stochastic dynamic programming, function approximation, policy gradient methods, approximate dynamic programming, and deep RL, as well as the latest advances in action and state constraints, safety guarantee, reference harmonization, robust RL, partially observable MDP, multiagent RL, inverse RL, offline RL, and so on.


Authors and Affiliations

  • School of Vehicle and Mobility, Tsinghua University, Beijing, China

    Shengbo Eben Li

About the author

Prof. Shengbo Eben Li received his M.S. and Ph.D. degrees from Tsinghua University in 2006 and 2009. He is currently a professor at Tsinghua University in the interdisciplinary field of autonomous driving and artificial intelligence. Before joining Tsinghua University, he has worked at Stanford University, University of Michigan, and UC Berkeley. His active research interests include intelligent vehicles and driver assistance, deep reinforcement learning, optimal control and estimation, etc.

He has published more than 130 peer-reviewed papers in top-tier international journals and conferences. He is the recipient of best paper awards (finalists) of IEEE ITSC, ICCAS, IEEE ICUS, IEEE IV, L4DC, etc. He has received a number of important academic honors, including National Award for Technological Invention of China (2013), National Award for Progress in Sci & Tech of China (2018), Distinguished Young Scholar of Beijing NSF (2018), and Natural Science Award of Chinese Association of Automation (2021). He also serves as Board of Governor of IEEE ITS Society, Senior AE of IEEE OJ ITS, and AEs of IEEE ITSM, IEEE Trans ITS, Automotive Innovation, etc.    

Bibliographic Information

  • Book Title: Reinforcement Learning for Sequential Decision and Optimal Control

  • Authors: Shengbo Eben Li

  • DOI: https://doi.org/10.1007/978-981-19-7784-8

  • Publisher: Springer Singapore

  • eBook Packages: Computer Science, Computer Science (R0)

  • Copyright Information: The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2023

  • Hardcover ISBN: 978-981-19-7783-1Published: 06 April 2023

  • Softcover ISBN: 978-981-19-7786-2Published: 07 April 2024

  • eBook ISBN: 978-981-19-7784-8Published: 05 April 2023

  • Edition Number: 1

  • Number of Pages: XXX, 462

  • Number of Illustrations: 4 b/w illustrations, 213 illustrations in colour

  • Topics: Machine Learning, Computational Intelligence, Systems Theory, Control, Engineering Mathematics, Control, Robotics, Mechatronics

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