Support vector machines optimization based theory, algorithms, and extensions

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Hauptverfasser: Deng, Naiyang (VerfasserIn), Tian, Yingjie (VerfasserIn), Zhang, Chunhua (VerfasserIn)
Format: Elektronisch E-Book
Sprache:English
Veröffentlicht: Boca Raton CRC Press, Taylor & Francis Group 2013
Schriftenreihe:Chapman & Hall/CRC data mining and knowledge discovery series
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500 |a "Preface Support vector machines (SVMs), which were introduced by Vapnik in the early 1990s, are proved effective and promising techniques for data mining. SVMs have recently been breakthroughs in advance in their theoretical studies and implementations of algorithms. They have been successfully applied in many fields such as text categorization, speech recognition, remote sensing image analysis, time series forecasting, information security and etc. SVMs, having their roots in Statistical Learning Theory (SLT) and optimization methods, become powerful tools to solve the problems of machine learning with finite training points and to overcome some traditional difficulties such as the "curse of dimensionality", "over-fitting" and etc. SVMs theoretical foundation and implementation techniques have been established and SVMs are gaining quick development and popularity due to their many attractive features: nice mathematical representations, geometrical explanations, good generalization abilities and promising empirical performance. Some SVM monographs, including more sophisticated ones such as Cristianini & Shawe-Taylor [39] and Scholkopf & Smola [124], have been published. We have published two books about SVMs in Science Press of China since 2004 [42, 43], which attracted widespread concerns and received favorable comments. After several years research and teaching, we decide to rewrite the books and add new research achievements. The starting point and focus of the book is optimization theory, which is different from other books on SVMs in this respect. Optimization is one of the pillars on which SVMs are built, so it makes a lot of sense to consider them from this point of view"-- 
650 4 |a Mathematical optimization 
700 1 |a Tian, Yingjie  |e Verfasser  |4 aut 
700 1 |a Zhang, Chunhua  |e Verfasser  |4 aut 
912 |a ZDB-38-EBR 
940 1 |q UER_PDA_EBR_Kauf 
943 1 |a oai:aleph.bib-bvb.de:BVB01-026046966 

Datensatz im Suchindex

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author Deng, Naiyang
Tian, Yingjie
Zhang, Chunhua
author_facet Deng, Naiyang
Tian, Yingjie
Zhang, Chunhua
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dewey-ones 519 - Probabilities and applied mathematics
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dewey-search 519.6
dewey-sort 3519.6
dewey-tens 510 - Mathematics
discipline Mathematik
format Electronic
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spelling Deng, Naiyang Verfasser aut
Support vector machines optimization based theory, algorithms, and extensions Naiyang Deng ; Yingjie Tian ; Chunhua Zhang
Boca Raton CRC Press, Taylor & Francis Group 2013
1 Online-Ressource (xxvii, 313 p.)
txt rdacontent
c rdamedia
cr rdacarrier
Chapman & Hall/CRC data mining and knowledge discovery series
"A Chapman & Hall book."
Includes bibliographical references (p. 299-313)
"Preface Support vector machines (SVMs), which were introduced by Vapnik in the early 1990s, are proved effective and promising techniques for data mining. SVMs have recently been breakthroughs in advance in their theoretical studies and implementations of algorithms. They have been successfully applied in many fields such as text categorization, speech recognition, remote sensing image analysis, time series forecasting, information security and etc. SVMs, having their roots in Statistical Learning Theory (SLT) and optimization methods, become powerful tools to solve the problems of machine learning with finite training points and to overcome some traditional difficulties such as the "curse of dimensionality", "over-fitting" and etc. SVMs theoretical foundation and implementation techniques have been established and SVMs are gaining quick development and popularity due to their many attractive features: nice mathematical representations, geometrical explanations, good generalization abilities and promising empirical performance. Some SVM monographs, including more sophisticated ones such as Cristianini & Shawe-Taylor [39] and Scholkopf & Smola [124], have been published. We have published two books about SVMs in Science Press of China since 2004 [42, 43], which attracted widespread concerns and received favorable comments. After several years research and teaching, we decide to rewrite the books and add new research achievements. The starting point and focus of the book is optimization theory, which is different from other books on SVMs in this respect. Optimization is one of the pillars on which SVMs are built, so it makes a lot of sense to consider them from this point of view"--
Mathematical optimization
Tian, Yingjie Verfasser aut
Zhang, Chunhua Verfasser aut
spellingShingle Deng, Naiyang
Tian, Yingjie
Zhang, Chunhua
Support vector machines optimization based theory, algorithms, and extensions
Mathematical optimization
title Support vector machines optimization based theory, algorithms, and extensions
title_auth Support vector machines optimization based theory, algorithms, and extensions
title_exact_search Support vector machines optimization based theory, algorithms, and extensions
title_full Support vector machines optimization based theory, algorithms, and extensions Naiyang Deng ; Yingjie Tian ; Chunhua Zhang
title_fullStr Support vector machines optimization based theory, algorithms, and extensions Naiyang Deng ; Yingjie Tian ; Chunhua Zhang
title_full_unstemmed Support vector machines optimization based theory, algorithms, and extensions Naiyang Deng ; Yingjie Tian ; Chunhua Zhang
title_short Support vector machines
title_sort support vector machines optimization based theory algorithms and extensions
title_sub optimization based theory, algorithms, and extensions
topic Mathematical optimization
topic_facet Mathematical optimization
work_keys_str_mv AT dengnaiyang supportvectormachinesoptimizationbasedtheoryalgorithmsandextensions
AT tianyingjie supportvectormachinesoptimizationbasedtheoryalgorithmsandextensions
AT zhangchunhua supportvectormachinesoptimizationbasedtheoryalgorithmsandextensions