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Large-Scale Kernel Machines
Contributor(s): Bottou, Léon (Editor), Chapelle, Olivier (Editor), DeCoste, Dennis (Editor)

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ISBN: 0262026252     ISBN-13: 9780262026253
Publisher: MIT Press
OUR PRICE: $9.49  

Binding Type: Hardcover
Published: August 2007
* Out of Print *

Annotation: Pervasive and networked computers have dramatically reduced the cost of collecting and distributing large datasets. In this context, machine learning algorithms that scale poorly could simply become irrelevant. We need learning algorithms that scale linearly with the volume of the data while maintaining enough statistical efficiency to outperform algorithms that simply process a random subset of the data. This volume offers researchers and engineers practical solutions for learning from large scale datasets, with detailed descriptions of algorithms and experiments carried out on realistically large datasets. At the same time it offers researchers information that can address the relative lack of theoretical grounding for many useful algorithms. After a detailed description of state-of-the-art support vector machine technology, an introduction of the essential concepts discussed in the volume, and a comparison of primal and dual optimization techniques, the book progresses from well-understood techniques to more novel and controversial approaches. Many contributors have made their code and data available online for further experimentation. Topics covered include fast implementations of known algorithms, approximations that are amenable to theoretical guarantees, and algorithms that perform well in practice but are difficult to analyze theoretically. Contributors: Leon Bottou, Yoshua Bengio, Stephane Canu, Eric Cosatto, Olivier Chapelle, Ronan Collobert, Dennis DeCoste, Ramani Duraiswami, Igor Durdanovic, Hans-Peter Graf, Arthur Gretton, Patrick Haffner, Stefanie Jegelka, Stephan Kanthak, S. Sathiya Keerthi, Yann LeCun, Chih-Jen Lin, Gaelle Loosli, Joaquin Quinonero-Candela, Carl EdwardRasmussen, Gunnar Ratsch, Vikas Chandrakant Raykar, Konrad Rieck, Vikas Sindhwani, Fabian Sinz, Soren Sonnenburg, Jason Weston, Christopher K. I. Williams, and Elad Yom-Tov

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Additional Information
BISAC Categories:
- Computers | Computer Science
Dewey: 005.73
LCCN: 2007000980
Age Level: 18-UP
Grade Level: 13-UP
Series: Neural Information Processing
Physical Information: 1.07" H x 8.41" W x 10.03" L (2.17 lbs) 396 pages
Features: Bibliography, Dust Cover, Illustrated, Index, Table of Contents
 
Descriptions, Reviews, Etc.
Publisher Description:

Solutions for learning from large scale datasets, including kernel learning algorithms that scale linearly with the volume of the data and experiments carried out on realistically large datasets.

Pervasive and networked computers have dramatically reduced the cost of collecting and distributing large datasets. In this context, machine learning algorithms that scale poorly could simply become irrelevant. We need learning algorithms that scale linearly with the volume of the data while maintaining enough statistical efficiency to outperform algorithms that simply process a random subset of the data. This volume offers researchers and engineers practical solutions for learning from large scale datasets, with detailed descriptions of algorithms and experiments carried out on realistically large datasets. At the same time it offers researchers information that can address the relative lack of theoretical grounding for many useful algorithms. After a detailed description of state-of-the-art support vector machine technology, an introduction of the essential concepts discussed in the volume, and a comparison of primal and dual optimization techniques, the book progresses from well-understood techniques to more novel and controversial approaches. Many contributors have made their code and data available online for further experimentation. Topics covered include fast implementations of known algorithms, approximations that are amenable to theoretical guarantees, and algorithms that perform well in practice but are difficult to analyze theoretically.

Contributors
L on Bottou, Yoshua Bengio, St phane Canu, Eric Cosatto, Olivier Chapelle, Ronan Collobert, Dennis DeCoste, Ramani Duraiswami, Igor Durdanovic, Hans-Peter Graf, Arthur Gretton, Patrick Haffner, Stefanie Jegelka, Stephan Kanthak, S. Sathiya Keerthi, Yann LeCun, Chih-Jen Lin, Ga lle Loosli, Joaquin Qui onero-Candela, Carl Edward Rasmussen, Gunnar R tsch, Vikas Chandrakant Raykar, Konrad Rieck, Vikas Sindhwani, Fabian Sinz, S ren Sonnenburg, Jason Weston, Christopher K. I. Williams, Elad Yom-Tov


Contributor Bio(s): Chapelle, Olivier: - Olivier Chapelle is Senior Research Scientist in Machine Learning at Yahoo.Weston, Jason: - Jason Weston is a Research Scientist at NEC Labs America.Bottou, Leon: - Léon Bottou is a Research Scientist at NEC Labs America.DeCoste, Dennis: - Dennis DeCoste is with Microsoft Research.Bottou, Leon: - Léon Bottou is a Research Scientist at NEC Labs America.Yom-Tov, Elad: - Elad Yom-Tov is Senior Researcher at Microsoft Research and Visiting Scientist at Technion-Israel Institute for Technology. He previously held positions at Yahoo Research and IBM Research.Quinonero-Candela, Joaquin: - Joaquin Quiñonero-Candela is a Researcher in the Online Services and Advertising Group at Microsoft Research Cambridge, U.K.Williams, Christopher K. I.: - Christopher K. I. Williams is Professor of Machine Learning and Director of the Institute for Adaptive and Neural Computation in the School of Informatics, University of Edinburgh.Bengio, Yoshua: - Yoshua Bengio is Professor of Computer Science at the Université de Montréal.Lecun, Yann: - Yann LeCun is Head of the Image Processing Research Department at AT&T Labs-Research.Chapelle, Olivier: - Olivier Chapelle is Senior Research Scientist in Machine Learning at Yahoo.Graf, Hans-Peter: - Peter Graf is Professor of Psychology at the University of British Columbia.Rasmussen, Carl Edward: - Carl Edward Rasmussen is a Lecturer at the Department of Engineering, University of Cambridge, and Adjunct Research Scientist at the Max Planck Institute for Biological Cybernetics, Tübingen.DeCoste, Dennis: - Dennis DeCoste is with Microsoft Research.Weston, Jason: - Jason Weston is a Research Scientist at NEC Labs America.Jordan, Michael I.: - Michael I. Jordan is Professor of Computer Science and of Statistics at the University of California, Berkeley, and recipient of the ACM/AAAI Allen Newell Award.Dietterich, Thomas G.: - Thomas G. Dietterich is Professor of Computer Science at Oregon State University.
 
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