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MATLAB & Simulink Based Books

Kernel Based Algorithms for Mining Huge Data Sets: Supervised, Semi-supervised, and Unsupervised Learning


Kernel Based Algorithms for Mining Huge Data Sets
    Te-Ming Huang, The University of Auckland
Vojislav Kecman, University of Auckland
Ivica Kopriva

Springer, 2006
Tel:  212-460-1500
Fax:  212-460-1575
E-mail:  service-ny@springer.com

Outside North America
Tel:  +49 30 827 87 5431
Fax:  +49 30 827 87 5707

ISBN: 3-540-31681-7
Language: English

     

Written for engineers and scientists, this book provides an introduction to the theory and algorithms for mining huge data sets. Topics covered include manifold approaches, component analysis, and low density separation.

MATLAB is introduced and used to solve some examples in the book. In addition, a companion set of MATLAB M-files is available for download.

Companion software available
Retrieve companion software  


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