Description

Book Synopsis

The domains of Pattern Recognition and Machine Learning have experienced exceptional interest and growth, however the overwhelming number of methods and applications can make the fields seem bewildering. This text offers an accessible and conceptually rich introduction, a solid mathematical development emphasizing simplicity and intuition. Students beginning to explore pattern recognition do not need a suite of mathematically advanced methods or complicated computational libraries to understand and appreciate pattern recognition; rather the fundamental concepts and insights, eminently teachable at the undergraduate level, motivate this text. This book provides methods of analysis that the reader can realistically undertake on their own, supported by real-world examples, case-studies, and worked numerical / computational studies.



Trade Review
“The book is an introduction to pattern recognition and machine learning. ... The book brings a balance between the analytical and experimental approaches of teaching these important subjects. It offers a great deal of examples and case studies. ... The book contains very useful appendices for refreshing mathematical concepts. Overall, this is an excellent introduction to pattern recognition and machine learning.” (Smaranda Belciug, zbMATH 1516.68002, 2023)

Table of Contents
Chapter 1. Overview.- Chapter 2. Introduction to Pattern Recognition.- Chapter 3. Learning.- Chapter 4. Representing Patterns.- Chapter 5. Feature Extraction and Selection.- Chapter 6. Distance-Based Classification.- Chapter 7. Inferring Class Models.- Chapter 8. Statistics-Based Classification.- Chapter 9. Classifier Testing and Validation.- Chapter 10. Discriminant-Based Classification.- Chapter 11. Ensemble Classification.- Chapter 12. Model-Free Classification.- Chapter 13. Conclusions and Directions.

An Introduction to Pattern Recognition and Machine Learning

    Product form

    £59.99

    Includes FREE delivery

    RRP £74.99 – you save £15.00 (20%)

    Order before 4pm today for delivery by Sat 20 Jun 2026.

    A Hardback by Paul Fieguth

    5 in stock


      View other formats and editions of An Introduction to Pattern Recognition and Machine Learning by Paul Fieguth

      Publisher: Springer Nature Switzerland AG
      Publication Date: 10/11/2022
      ISBN13: 9783030959937, 978-3030959937
      ISBN10:

      Description

      Book Synopsis

      The domains of Pattern Recognition and Machine Learning have experienced exceptional interest and growth, however the overwhelming number of methods and applications can make the fields seem bewildering. This text offers an accessible and conceptually rich introduction, a solid mathematical development emphasizing simplicity and intuition. Students beginning to explore pattern recognition do not need a suite of mathematically advanced methods or complicated computational libraries to understand and appreciate pattern recognition; rather the fundamental concepts and insights, eminently teachable at the undergraduate level, motivate this text. This book provides methods of analysis that the reader can realistically undertake on their own, supported by real-world examples, case-studies, and worked numerical / computational studies.



      Trade Review
      “The book is an introduction to pattern recognition and machine learning. ... The book brings a balance between the analytical and experimental approaches of teaching these important subjects. It offers a great deal of examples and case studies. ... The book contains very useful appendices for refreshing mathematical concepts. Overall, this is an excellent introduction to pattern recognition and machine learning.” (Smaranda Belciug, zbMATH 1516.68002, 2023)

      Table of Contents
      Chapter 1. Overview.- Chapter 2. Introduction to Pattern Recognition.- Chapter 3. Learning.- Chapter 4. Representing Patterns.- Chapter 5. Feature Extraction and Selection.- Chapter 6. Distance-Based Classification.- Chapter 7. Inferring Class Models.- Chapter 8. Statistics-Based Classification.- Chapter 9. Classifier Testing and Validation.- Chapter 10. Discriminant-Based Classification.- Chapter 11. Ensemble Classification.- Chapter 12. Model-Free Classification.- Chapter 13. Conclusions and Directions.

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account