Handbook of Learning and Approximate Dynamic Programming - IEEE Press Series on Computational Intelligence

Handbook of Learning and Approximate Dynamic Programming

Handbook of Learning and Approximate Dynamic Programming - IEEE Press Series on Computational Intelligence

hardback
Published: 10 August, 2004
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Description

  • A complete resource to Approximate Dynamic Programming (ADP), including on-line simulation code
  • Provides a tutorial that readers can use to start implementing the learning algorithms provided in the book
  • Includes ideas, directions, and recent results on current research issues and addresses applications where ADP has been successfully implemented
  • The contributors are leading researchers in the field
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More Details

Type Book
ISBN13 9780471660545
ISBN10 047166054X
Number Of Pages 672
Item Weight 1043 g
Product Dimensions 158 x 236 x 36 mm
Publisher / Reseller John Wiley & Sons Inc
Format hardback
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Media Reviews

"…highly recommended to researchers, graduate students, engineers, and scientists…" (E-STREAMS, February 2006)

"Clearly, this book is useful for researchers who do or want to do research on ADP." (IIE Transactions-Quality & Reliability Engineering, February 2006)

"…I would like to congratulate the editors, for putting together this wonderful collection of research contributions." (Computing Reviews.com, March 18, 2005)

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Author's Bio

JENNIE SI is Professor of Electrical Engineering, Arizona State University, Tempe, AZ. She is director of Intelligent Systems Laboratory, which focuses on analysis and design of learning and adaptive systems. In addition to her own publications, she is the Associate Editor for IEEE Transactions on Neural Networks, and past Associate Editor for IEEE Transactions on Automatic Control and IEEE Transactions on Semiconductor Manufacturing. She was the co-chair for the 2002 NSF Workshop on Learning and Approximate Dynamic Programming.

ANDREW G. BARTO is Professor of Computer Science, University of Massachusetts, Amherst. He is co-director of the Autonomous Learning Laboratory, which carries out interdisciplinary research on machine learning and modeling of biological learning. He is a core faculty member of the Neuroscience and Behavior Program of the University of Massachusetts and was the co-chair for the 2002 NSF Workshop on Learning and Approximate Dynamic Programming. He currently serves as an associate editor of Neural Computation.

WARREN B. POWELL is Professor of Operations Research and Financial Engineering at Princeton University. He is director of CASTLE Laboratory, which focuses on real-time optimization of complex dynamic systems arising in transportation and logistics.

DONALD C. WUNSCH is the Mary K. Finley Missouri Distinguished Professor in the Electrical and Computer Engineering Department at the University of Missouri, Rolla. He heads the Applied Computational Intelligence Laboratory and also has a joint appointment in Computer Science, and is President-Elect of the International Neural Networks Society.

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