Description

Book Synopsis
Pattern recognition is the construction of algorithms to decode and recognize images or data patterns in so-called random data. It is a vital and growing field with applications in artifical intelligence, machine learing, data mining, speech recognition, bioinformatics, and computer vision.

Trade Review
"...it provides a good introduction to the subject of Pattern Classification." (Journal of Classification, September 2007)

"...a fantastic book! The presentation...could not be better, and I recommend that future authors consider...this book as a role model." (Journal of Statistical Computation and Simulation, March 2006)

"...strongly recommended both as a professional reference and as a text for students..." (Technometrics, February 2002)

"...provides information needed to choose the most appropriate of the many available technique for a given class of problems." (SciTech Book News, Vol. 25, No. 2, June 2001)

"I do not believe anybody wishing to teach or do serious work on Pattern Recognition can ignore this book, as it is the sort of book one wishes to find the time to read from cover to cover!" (Pattern Analysis & Applications Journal, 2001)

"This book is the unique text/professional reference for any serious student or worker in the field of pattern recognition." (Mathematical Reviews, Issue 2001k)

"...gives a systematic overview about the major topics in pattern recognition, based whenever possible on fundamental principles." (Zentralblatt MATH, Vol. 968, 2001/18)

"attractively presented and readable" (Journal of Classification, Vol.18, No.2 2001)

Table of Contents
Bayesian Decision Theory.

Maximum-Likelihood and Bayesian Parameter Estimation.

Nonparametric Techniques.

Linear Discriminant Functions.

Multilayer Neural Networks.

Stochastic Methods.

Nonmetric Methods.

Algorithm-Independent Machine Learning.

Unsupervised Learning and Clustering.

Appendix.

Index.

Pattern Classification

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    £136.76

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    RRP £151.95 – you save £15.19 (9%)

    Order before 4pm today for delivery by Fri 19 Jun 2026.

    A Hardback by Richard O. Duda, Peter E. Hart, David G. Stork


      View other formats and editions of Pattern Classification by Richard O. Duda

      Publisher: John Wiley & Sons Inc
      Publication Date: 21/11/2000
      ISBN13: 9780471056690, 978-0471056690
      ISBN10: 0471056693

      Description

      Book Synopsis
      Pattern recognition is the construction of algorithms to decode and recognize images or data patterns in so-called random data. It is a vital and growing field with applications in artifical intelligence, machine learing, data mining, speech recognition, bioinformatics, and computer vision.

      Trade Review
      "...it provides a good introduction to the subject of Pattern Classification." (Journal of Classification, September 2007)

      "...a fantastic book! The presentation...could not be better, and I recommend that future authors consider...this book as a role model." (Journal of Statistical Computation and Simulation, March 2006)

      "...strongly recommended both as a professional reference and as a text for students..." (Technometrics, February 2002)

      "...provides information needed to choose the most appropriate of the many available technique for a given class of problems." (SciTech Book News, Vol. 25, No. 2, June 2001)

      "I do not believe anybody wishing to teach or do serious work on Pattern Recognition can ignore this book, as it is the sort of book one wishes to find the time to read from cover to cover!" (Pattern Analysis & Applications Journal, 2001)

      "This book is the unique text/professional reference for any serious student or worker in the field of pattern recognition." (Mathematical Reviews, Issue 2001k)

      "...gives a systematic overview about the major topics in pattern recognition, based whenever possible on fundamental principles." (Zentralblatt MATH, Vol. 968, 2001/18)

      "attractively presented and readable" (Journal of Classification, Vol.18, No.2 2001)

      Table of Contents
      Bayesian Decision Theory.

      Maximum-Likelihood and Bayesian Parameter Estimation.

      Nonparametric Techniques.

      Linear Discriminant Functions.

      Multilayer Neural Networks.

      Stochastic Methods.

      Nonmetric Methods.

      Algorithm-Independent Machine Learning.

      Unsupervised Learning and Clustering.

      Appendix.

      Index.

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