Description

Book Synopsis
This book provides a fundamentally new approach to pattern recognition in which objects are characterized by relations to other objects instead of by using features or models. This 'dissimilarity representation' bridges the gap between the traditionally opposing approaches of statistical and structural pattern recognition.Physical phenomena, objects and events in the world are related in various and often complex ways. Such relations are usually modeled in the form of graphs or diagrams. While this is useful for communication between experts, such representation is difficult to combine and integrate by machine learning procedures. However, if the relations are captured by sets of dissimilarities, general data analysis procedures may be applied for analysis.With their detailed description of an unprecedented approach absent from traditional textbooks, the authors have crafted an essential book for every researcher and systems designer studying or developing pattern recognition systems.

Table of Contents
# Spaces # Characterization of Dissimilarities # Learning Approaches # Dissimilarity Measures # Visualization # Further Data Exploration # One-Class Classifiers # Classification # Combining # Representation Review and Recommendations # Conclusions and Open Problems

Dissimilarity Representation For Pattern

Product form

£201.60

Includes FREE delivery

RRP £224.00 – you save £22.40 (10%)

Order before 4pm tomorrow for delivery by Mon 26 Jan 2026.

A Hardback by Robert P W Duin, Elzbieta Pekalska

Out of stock


    View other formats and editions of Dissimilarity Representation For Pattern by Robert P W Duin

    Publisher: World Scientific Publishing Co Pte Ltd
    Publication Date: 07/12/2005
    ISBN13: 9789812565303, 978-9812565303
    ISBN10: 9812565302

    Description

    Book Synopsis
    This book provides a fundamentally new approach to pattern recognition in which objects are characterized by relations to other objects instead of by using features or models. This 'dissimilarity representation' bridges the gap between the traditionally opposing approaches of statistical and structural pattern recognition.Physical phenomena, objects and events in the world are related in various and often complex ways. Such relations are usually modeled in the form of graphs or diagrams. While this is useful for communication between experts, such representation is difficult to combine and integrate by machine learning procedures. However, if the relations are captured by sets of dissimilarities, general data analysis procedures may be applied for analysis.With their detailed description of an unprecedented approach absent from traditional textbooks, the authors have crafted an essential book for every researcher and systems designer studying or developing pattern recognition systems.

    Table of Contents
    # Spaces # Characterization of Dissimilarities # Learning Approaches # Dissimilarity Measures # Visualization # Further Data Exploration # One-Class Classifiers # Classification # Combining # Representation Review and Recommendations # Conclusions and Open Problems

    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