The Resource Graphs for Pattern Recognition
Graphs for Pattern Recognition
Resource Information
The item Graphs for Pattern Recognition represents a specific, individual, material embodiment of a distinct intellectual or artistic creation found in Missouri University of Science & Technology Library.This item is available to borrow from 1 library branch.
Resource Information
The item Graphs for Pattern Recognition represents a specific, individual, material embodiment of a distinct intellectual or artistic creation found in Missouri University of Science & Technology Library.
This item is available to borrow from 1 library branch.
 Summary
 This monograph deals with mathematical constructions that are foundational in such an important area of data mining as pattern recognition. By using combinatorial and graph theoretic techniques, a closer look is taken at infeasible systems of linear inequalities, whose generalized solutions act as building blocks of geometric decision rules for pattern recognition. Infeasible systems of linear inequalities prove to be a key object in pattern recognition problems described in geometric terms thanks to the committee method. Such infeasible systems of inequalities represent an important special subclass of infeasible systems of constraints with a monotonicity property  systems whose multiindices of feasible subsystems form abstract simplicial complexes (independence systems), which are fundamental objects of combinatorial topology. The methods of data mining and machine learning discussed in this monograph form the foundation of technologies like big data and deep learning, which play a growing role in many areas of humantechnology interaction and help to find solutions, better solutions and excellent solutions. Contents: Preface Pattern recognition, infeasible systems of linear inequalities, and graphs Infeasible monotone systems of constraints Complexes, (hyper)graphs, and inequality systems Polytopes, positive bases, and inequality systems Monotone Boolean functions, complexes, graphs, and inequality systems Inequality systems, committees, (hyper)graphs, and alternative covers Bibliography List of notation Index
 Language
 eng
 Label
 Graphs for Pattern Recognition
 Title
 Graphs for Pattern Recognition
 Language
 eng
 Summary
 This monograph deals with mathematical constructions that are foundational in such an important area of data mining as pattern recognition. By using combinatorial and graph theoretic techniques, a closer look is taken at infeasible systems of linear inequalities, whose generalized solutions act as building blocks of geometric decision rules for pattern recognition. Infeasible systems of linear inequalities prove to be a key object in pattern recognition problems described in geometric terms thanks to the committee method. Such infeasible systems of inequalities represent an important special subclass of infeasible systems of constraints with a monotonicity property  systems whose multiindices of feasible subsystems form abstract simplicial complexes (independence systems), which are fundamental objects of combinatorial topology. The methods of data mining and machine learning discussed in this monograph form the foundation of technologies like big data and deep learning, which play a growing role in many areas of humantechnology interaction and help to find solutions, better solutions and excellent solutions. Contents: Preface Pattern recognition, infeasible systems of linear inequalities, and graphs Infeasible monotone systems of constraints Complexes, (hyper)graphs, and inequality systems Polytopes, positive bases, and inequality systems Monotone Boolean functions, complexes, graphs, and inequality systems Inequality systems, committees, (hyper)graphs, and alternative covers Bibliography List of notation Index
 Cataloging source
 IDEBK
 http://library.link/vocab/creatorName
 Gainanov, Damir
 Dewey number
 516/.1
 Index
 index present
 LC call number
 QA295
 LC item number
 .G275 2016
 Literary form
 non fiction
 Nature of contents

 dictionaries
 bibliography
 http://library.link/vocab/subjectName

 Inequalities (Mathematics)
 Graph theory
 Deutsche Arbeitsgemeinschaft für Mustererkennung
 MATHEMATICS
 Graph theory
 Inequalities (Mathematics)
 Lineares Ungleichungssystem
 Graphentheorie
 Kombinatorische Optimierung
 Label
 Graphs for Pattern Recognition
 Bibliography note
 Includes bibliographical references (pages 133140) and index
 Carrier category
 online resource
 Carrier category code

 cr
 Carrier MARC source
 rdacarrier
 Content category
 text
 Content type code

 txt
 Content type MARC source
 rdacontent
 Control code
 960975717
 Dimensions
 unknown
 Extent
 1 online resource (158)
 Form of item
 online
 Isbn
 9783110481068
 Media category
 computer
 Media MARC source
 rdamedia
 Media type code

 c
 http://library.link/vocab/ext/overdrive/overdriveId
 964181
 Specific material designation
 remote
 System control number
 (OCoLC)960975717
 Label
 Graphs for Pattern Recognition
 Bibliography note
 Includes bibliographical references (pages 133140) and index
 Carrier category
 online resource
 Carrier category code

 cr
 Carrier MARC source
 rdacarrier
 Content category
 text
 Content type code

 txt
 Content type MARC source
 rdacontent
 Control code
 960975717
 Dimensions
 unknown
 Extent
 1 online resource (158)
 Form of item
 online
 Isbn
 9783110481068
 Media category
 computer
 Media MARC source
 rdamedia
 Media type code

 c
 http://library.link/vocab/ext/overdrive/overdriveId
 964181
 Specific material designation
 remote
 System control number
 (OCoLC)960975717
Subject
 Deutsche Arbeitsgemeinschaft für Mustererkennung
 Deutsche Arbeitsgemeinschaft für Mustererkennung
 Electronic books
 Graph theory
 Graph theory
 Graphentheorie
 Inequalities (Mathematics)
 Kombinatorische Optimierung
 Lineares Ungleichungssystem
 MATHEMATICS  Geometry  General
 Inequalities (Mathematics)
Genre
Member of
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<div class="citation" vocab="http://schema.org/"><i class="fa faexternallinksquare fafw"></i> Data from <span resource="http://link.library.mst.edu/portal/GraphsforPatternRecognition/KUbAekjpCgE/" typeof="Book http://bibfra.me/vocab/lite/Item"><span property="name http://bibfra.me/vocab/lite/label"><a href="http://link.library.mst.edu/portal/GraphsforPatternRecognition/KUbAekjpCgE/">Graphs for Pattern Recognition</a></span>  <span property="potentialAction" typeOf="OrganizeAction"><span property="agent" typeof="LibrarySystem http://library.link/vocab/LibrarySystem" resource="http://link.library.mst.edu/"><span property="name http://bibfra.me/vocab/lite/label"><a property="url" href="http://link.library.mst.edu/">Missouri University of Science & Technology Library</a></span></span></span></span></div>