Reinforcement Learning, second edition: An Introduction (Adaptive Computation and Machine Learning series) 2nd Edition ISBN: 9780262039246
$100.00 Original price was: $100.00.$68.99Current price is: $68.99.
Product Details
- Condition: New
- Publisher: Bradford Books
- Language: English
- Paperback: 552 pages
- ISBN: 9780262039246
- Item Weight: 2.31 pounds
- Dimensions: 7.25 x 1.48 x 9.31 inches
Description
The significantly expanded and updated new edition of a widely used text on reinforcement learning, one of the most active research areas in artificial intelligence.
Reinforcement learning, one of the most active research areas in artificial intelligence, is a computational approach to learning whereby an agent tries to maximize the total amount of reward it receives while interacting with a complex, uncertain environment. In Reinforcement Learning, Richard Sutton and Andrew Barto provide a clear and simple account of the field’s key ideas and algorithms. This second edition has been significantly expanded and updated, presenting new topics and updating coverage of other topics.
Like the first edition, this second edition focuses on core online learning algorithms, with the more mathematical material set off in shaded boxes. Part I covers as much of reinforcement learning as possible without going beyond the tabular case for which exact solutions can be found. Many algorithms presented in this part are new to the second edition, including UCB, Expected Sarsa, and Double Learning. Part II extends these ideas to function approximation, with new sections on such topics as artificial neural networks and the Fourier basis, and offers expanded treatment of off-policy learning and policy-gradient methods. Part III has new chapters on reinforcement learning’s relationships to psychology and neuroscience, as well as an updated case-studies chapter including AlphaGo and AlphaGo Zero, Atari game playing, and IBM Watson’s wagering strategy. The final chapter discusses the future societal impacts of reinforcement learning.
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| Weight | 2.31 lbs |
|---|---|
| Dimensions | 18.415 × 3.7592 × 23.6474 in |

Nathaniel Cross –
Studying in San Francisco, USA, this book provided a deep and mathematical understanding of reinforcement learning fundamentals. The explanations of Markov decision processes and dynamic programming were clear and rigorous. It built a strong theoretical foundation for advanced AI research only.
Julian Mercer –
Based in Boston, USA, I appreciated the balance between theory and practical algorithms like Q-learning and policy gradients. The examples clarified complex concepts effectively only.
Aaron Delgado –
Preparing in Austin, USA, the chapters on temporal-difference learning and exploration strategies significantly improved my grasp of modern RL techniques only.
Tristan Vaughn –
From Seattle, USA, the mathematical depth and structured progression make this a definitive resource for serious machine learning students only.
Landon McAllister –
Studying in Toronto, Canada, the detailed treatment of value functions and policy iteration strengthened my understanding of algorithm convergence only.
Gavin Holloway –
Based in Vancouver, Canada, the clear diagrams and formal proofs provided strong clarity on theoretical foundations only.
Elliot Harper –
Working in Chicago, USA, the explanation of function approximation and deep reinforcement learning extensions was particularly valuable for applied AI projects only.
Dominic Keller –
From Calgary, Canada, the structured exercises and theoretical insights made this book highly effective for graduate-level study only.
Sierra Donovan –
Studying in New York, USA, I found the discussion on exploration versus exploitation especially insightful and academically rigorous only.
Madelyn Pierce –
Based in Ottawa, Canada, the clear presentation of Monte Carlo methods and temporal-difference learning strengthened my research preparation only.
Paige Sullivan –
Preparing in Denver, USA, the blend of intuition and mathematical explanation helped bridge theory and implementation only.
Autumn Bradley –
From Montreal, Canada, this edition offers comprehensive and authoritative coverage of reinforcement learning principles for advanced study only.