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The Dissimilarity Representation For Pattern Recognition Foundations And Applications Elzbieta Pekalska

  • SKU: BELL-995440
The Dissimilarity Representation For Pattern Recognition Foundations And Applications Elzbieta Pekalska
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The Dissimilarity Representation For Pattern Recognition Foundations And Applications Elzbieta Pekalska instant download after payment.

Publisher: World Scientific Publishing Company
File Extension: PDF
File size: 30.47 MB
Pages: 634
Author: Elzbieta Pekalska, Robert P. W. Duin
ISBN: 9789812565303, 9812565302
Language: English
Year: 2005

Product desciption

The Dissimilarity Representation For Pattern Recognition Foundations And Applications Elzbieta Pekalska by Elzbieta Pekalska, Robert P. W. Duin 9789812565303, 9812565302 instant download after payment.

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.

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