Support Vector Machines

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A01=Chunhua Zhang
A01=Naiyang Deng
A01=Yingjie Tian
advanced support vector machine techniques
Author_Chunhua Zhang
Author_Naiyang Deng
Author_Yingjie Tian
Binary Classification Problem
Category=UYQ
classification
convex optimisation
Convex Programming
Convex Programming Problem
Convex Quadratic Programming
Convex Quadratic Programming Problem
Crammer-Singer SVM
decision
Decision Function
dual
Dual Problem
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Exist Lagrange Multipliers
Feasible Point
Final Decision Function
function
geometric data analysis
Initial Training Set
kernel methods
Linearly Separable
Loo Error
machine learning theory
nonsupport
optimization theory and support vector machines
pattern recognition algorithms
points
Positive Semidefinite
primal
problem
regularized twin SVMs for binary classification problems
Roc
Semidefinite Programming
set
solve real-world problems using SVMs
SRM
SRM Principle
statistical leaning theory for C-support vector classification
statistical risk minimisation
Support Vector Classification
Support Vector Machines
Support Vector Regression
SVMs for classification and regression problems
SVMs for multi-classification problems
SVMs for problems with perturbations
SVMs for semi-supervised problems
training
Training Points
Training Set
Universum classification problem
VC Dimension
Vector Classification

Product details

  • ISBN 9781439857922
  • Weight: 840g
  • Dimensions: 156 x 234mm
  • Publication Date: 17 Dec 2012
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Support Vector Machines: Optimization Based Theory, Algorithms, and Extensions presents an accessible treatment of the two main components of support vector machines (SVMs)—classification problems and regression problems. The book emphasizes the close connection between optimization theory and SVMs since optimization is one of the pillars on which SVMs are built.

The authors share insight on many of their research achievements. They give a precise interpretation of statistical leaning theory for C-support vector classification. They also discuss regularized twin SVMs for binary classification problems, SVMs for solving multi-classification problems based on ordinal regression, SVMs for semi-supervised problems, and SVMs for problems with perturbations.

To improve readability, concepts, methods, and results are introduced graphically and with clear explanations. For important concepts and algorithms, such as the Crammer-Singer SVM for multi-class classification problems, the text provides geometric interpretations that are not depicted in current literature.

Enabling a sound understanding of SVMs, this book gives beginners as well as more experienced researchers and engineers the tools to solve real-world problems using SVMs.

Naiyang Deng, Yingjie Tian, Chunhua Zhang

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