Explore the latest books of this year!
Bookbot

Support Vector Machines for Pattern Classification

Authors

Book rating

Parameters

  • 471 pages
  • 17 hours of reading

More about the book

A guide on the use of SVMs in pattern classification, including a rigorous performance comparison of classifiers and regressors. The book presents architectures for multiclass classification and function approximation problems, as well as evaluation criteria for classifiers and regressors. Features: Clarifies the characteristics of two-class SVMs; Discusses kernel methods for improving the generalization ability of neural networks and fuzzy systems; Contains ample illustrations and examples; Includes performance evaluation using publicly available data sets; Examines Mahalanobis kernels, empirical feature space, and the effect of model selection by cross-validation; Covers sparse SVMs, learning using privileged information, semi-supervised learning, multiple classifier systems, and multiple kernel learning; Explores incremental training based batch training and active-set training methods, and decomposition techniques for linear programming SVMs; Discusses variable selection for support vector regressors.

Book purchase

Support Vector Machines for Pattern Classification, Shigeo Abe

Language
Released
2010
product-detail.submit-box.info.binding
(Hardcover)
We’ll email you as soon as we track it down.

Payment methods

4.2
Very Good
5 Ratings

We’re missing your review here.

Title
Support Vector Machines for Pattern Classification
Language
English
Authors
Shigeo Abe
Released
2010
Format
Hardcover
Pages
471
ISBN10
1849960976
ISBN13
9781849960977
Series
Rating
4.2 out of 5
Description
A guide on the use of SVMs in pattern classification, including a rigorous performance comparison of classifiers and regressors. The book presents architectures for multiclass classification and function approximation problems, as well as evaluation criteria for classifiers and regressors. Features: Clarifies the characteristics of two-class SVMs; Discusses kernel methods for improving the generalization ability of neural networks and fuzzy systems; Contains ample illustrations and examples; Includes performance evaluation using publicly available data sets; Examines Mahalanobis kernels, empirical feature space, and the effect of model selection by cross-validation; Covers sparse SVMs, learning using privileged information, semi-supervised learning, multiple classifier systems, and multiple kernel learning; Explores incremental training based batch training and active-set training methods, and decomposition techniques for linear programming SVMs; Discusses variable selection for support vector regressors.