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Kalman Filtering and Neural Networks
 
 
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Kalman Filtering and Neural Networks [Hardcover]

Simon Haykin (Author)
5.0 out of 5 stars  See all reviews (1 customer review)

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Book Description

October 8, 2001 0471369985 978-0471369981 1
State-of-the-art coverage of Kalman filter methods for the design of neural networks

This self-contained book consists of seven chapters by expert contributors that discuss Kalman filtering as applied to the training and use of neural networks. Although the traditional approach to the subject is almost always linear, this book recognizes and deals with the fact that real problems are most often nonlinear.

The first chapter offers an introductory treatment of Kalman filters with an emphasis on basic Kalman filter theory, Rauch-Tung-Striebel smoother, and the extended Kalman filter. Other chapters cover:

  • An algorithm for the training of feedforward and recurrent multilayered perceptrons, based on the decoupled extended Kalman filter (DEKF)
  • Applications of the DEKF learning algorithm to the study of image sequences and the dynamic reconstruction of chaotic processes
  • The dual estimation problem
  • Stochastic nonlinear dynamics: the expectation-maximization (EM) algorithm and the extended Kalman smoothing (EKS) algorithm
  • The unscented Kalman filter

Each chapter, with the exception of the introduction, includes illustrative applications of the learning algorithms described here, some of which involve the use of simulated and real-life data. Kalman Filtering and Neural Networks serves as an expert resource for researchers in neural networks and nonlinear dynamical systems.

An Instructor's Manual presenting detailed solutions to all the problems in the book is available upon request from the Wiley Makerting Department.


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Editorial Reviews

Review

"Although the traditional approach to the subject is usually linear, this book recognizes and deals with the fact that real problems are most often nonlinear." (SciTech Book News, Vol. 25, No. 4, December 2001)

From the Back Cover

State-of-the-art coverage of Kalman filter methods for the design of neural networks

This self-contained book consists of seven chapters by expert contributors that discuss Kalman filtering as applied to the training and use of neural networks. Although the traditional approach to the subject is almost always linear, this book recognizes and deals with the fact that real problems are most often nonlinear.

The first chapter offers an introductory treatment of Kalman filters with an emphasis on basic Kalman filter theory, Rauch-Tung-Striebel smoother, and the extended Kalman filter. Other chapters cover:
* An algorithm for the training of feedforward and recurrent multilayered perceptrons, based on the decoupled extended Kalman filter (DEKF)
* Applications of the DEKF learning algorithm to the study of image sequences and the dynamic reconstruction of chaotic processes
* The dual estimation problem
* Stochastic nonlinear dynamics: the expectation-maximization (EM) algorithm and the extended Kalman smoothing (EKS) algorithm
* The unscented Kalman filter

Each chapter, with the exception of the introduction, includes illustrative applications of the learning algorithms described here, some of which involve the use of simulated and real-life data. Kalman Filtering and Neural Networks serves as an expert resource for researchers in neural networks and nonlinear dynamical systems.

Product Details

  • Hardcover: 304 pages
  • Publisher: Wiley-Interscience; 1 edition (October 8, 2001)
  • Language: English
  • ISBN-10: 0471369985
  • ISBN-13: 978-0471369981
  • Product Dimensions: 9.5 x 6.4 x 0.8 inches
  • Shipping Weight: 1.2 pounds (View shipping rates and policies)
  • Average Customer Review: 5.0 out of 5 stars  See all reviews (1 customer review)
  • Amazon Best Sellers Rank: #1,343,841 in Books (See Top 100 in Books)

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3 of 3 people found the following review helpful:
5.0 out of 5 stars very useful, May 8, 2009
This review is from: Kalman Filtering and Neural Networks (Hardcover)
This book is very coherent in its exposition of ideas and reads almost like an "authored" book. There are some redundancy in explanation of ideas by different authors, but proper references are made to other chapters in the book (that were written by other authors) for a complete explanation.

You can find a self contained explanation of Extended Kalman Filter, Unscented Kalman Filter, and Particle Filter as applied to machine learning, where you have some parameter values to be automatically identified such as in weights for neural networks.

My interest was primarily in Unscented Kalman Filter and the book was detailed enough so that I could code my own Unscented Kalman Filter and reproduce some examples in the book. In the process, I had to look up on the internet on Robbins-Monro Algorithm because the book lacked a detailed explanation about it even though it was a suggested method for updating innovation covariance. Overall, the explanations were clear, and it has been a smooth process from reading this book to applying the algorithms to my own problem at hand.
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Inside This Book (learn more)
First Sentence:
The celebrated Kalman filter, rooted in the state-space formulation of linear dynamical systems, provides a recursive solution to the linear optimal filtering problem. Read the first page
Key Phrases - Statistically Improbable Phrases (SIPs): (learn more)
multistream training, approximate error covariance matrix, artificial process noise, multiple training instances, entropic cost function, prediction error cost, iterated output, unscented particle filter, unscented transformation, dual estimation, colored measurement noise, recursive derivatives, joint cost function, sigma points, observable time series, weight vector update, iterated prediction, nonlinear output function, chaotic invariants, iterative prediction, error covariance update, embedding delay, double inverted pendulum, filter training, backward filter
Key Phrases - Capitalized Phrases (CAPs): (learn more)
Neural Information Processing Systems, New York, International Conference, Neural Computation, Simon Haykin, Automatic Control, John Wiley, Predicted Actual, Cambridge University Engineering Department, Adaptive Filter Theory, Department of Computer Science, Epochs Figure, Journal of Basic Engineering, Journal of the Royal Statistical Society, San Mateo, Upper Saddle River, Academic Press, International Symposium, Journal of the American Statistical Association, University of Toronto, Englewood Cliffs, Lecture Notes, University of Washington, Using Eqs
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