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ISBN-10
0262039249
ISBN-13
978-0262039246
Weight (pound)
2.64 pounds
Dimensions (inch)
7.25 x 1.56 x 9.25 inches
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Reinforcement Learning: An Introduction (2nd Edition) is the definitive textbook on reinforcement learning, one of the most dynamic and influential areas of artificial intelligence and machine learning. Authored by leading researchers Richard S. Sutton and Andrew G. Barto, this widely respected work offers a clear, unified framework for understanding how agents learn from interaction with their environment through trial and error.
The book introduces core reinforcement learning concepts using intuitive explanations supported by practical, well-tested algorithms. It begins with foundational tabular methods and progressively explores key techniques such as temporal-difference learning, Upper Confidence Bound (UCB) action selection, Expected Sarsa, Double Learning, and Monte Carlo methods. Each topic is carefully developed to build both theoretical understanding and practical intuition.
Expanding beyond basic methods, the second edition provides in-depth coverage of function approximation, neural networks, policy-gradient methods, and off-policy learning—topics essential for scaling reinforcement learning to complex, real-world problems. The authors also offer valuable insights into the connections between reinforcement learning, psychology, and neuroscience, highlighting the interdisciplinary roots and broader implications of the field.
Updated case studies and examples, including AlphaGo, Atari game-playing agents, and IBM Watson, demonstrate how reinforcement learning techniques are applied in practice and in cutting-edge research. Serving as both a comprehensive textbook and an enduring reference, Reinforcement Learning: An Introduction is an essential resource for students, researchers, engineers, and professionals working in reinforcement learning, artificial intelligence, and machine learning.
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Reinforcement Learning
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