Book contents
- Frontmatter
- Contents
- Preface
- Notation
- 1 The Learning Methodology
- 2 Linear Learning Machines
- 3 Kernel-Induced Feature Spaces
- 4 Generalisation Theory
- 5 Optimisation Theory
- 6 Support Vector Machines
- 7 Implementation Techniques
- 8 Applications of Support Vector Machines
- A Pseudocode for the SMO Algorithm
- B Background Mathematics
- References
- Index
Preface
Published online by Cambridge University Press: 05 March 2013
- Frontmatter
- Contents
- Preface
- Notation
- 1 The Learning Methodology
- 2 Linear Learning Machines
- 3 Kernel-Induced Feature Spaces
- 4 Generalisation Theory
- 5 Optimisation Theory
- 6 Support Vector Machines
- 7 Implementation Techniques
- 8 Applications of Support Vector Machines
- A Pseudocode for the SMO Algorithm
- B Background Mathematics
- References
- Index
Summary
In the last few years there have been very significant developments in the theoretical understanding of Support Vector Machines (SVMs) as well as algorithmic strategies for implementing them, and applications of the approach to practical problems. We believe that the topic has reached the point at which it should perhaps be viewed as its own subfield of machine learning, a subfield which promises much in both theoretical insights and practical usefulness. Despite reaching this stage of development, we were aware that no organic integrated introduction to the subject had yet been attempted. Presenting a comprehensive introduction to SVMs requires the synthesis of a surprisingly wide range of material, including dual representations, feature spaces, learning theory, optimisation theory, and algorithmics. Though active research is still being pursued in all of these areas, there are stable foundations in each that together form the basis for the SVM concept. By building from those stable foundations, this book attempts a measured and accessible introduction to the subject of Support Vector Machines.
The book is intended for machine learning students and practitioners who want a gentle but rigorous introduction to this new class of learning systems. It is organised as a textbook that can be used either as a central text for a course on SVMs, or as an additional text in a neural networks, machine learning, or pattern recognition class.
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- Information
- Publisher: Cambridge University PressPrint publication year: 2000
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