Preface | |
Part I. Basic Concepts: 1. Pattern analysis |
|
2. Kernel methods: an overview | |
3. Properties of kernels | |
4. Detecting stable patterns | |
Part II. Pattern Analysis Algorithms: 5. Elementary algorithms in feature space |
|
6. Pattern analysis using eigen-decompositions | |
7. Pattern analysis using convex optimisation | |
8. Ranking, clustering and data visualisation | |
Part III. Constructing Kernels: 9. Basic kernels and kernel types |
|
10. Kernels for text | |
11. Kernels for structured data: strings, trees, etc. | |
12. Kernels from generative models | |
Part IV. Appendices | |
Appendix A. Proof omitted from the main text | |
Appendix B. Notational conventions | |
Appendix C. List of pattern analysis methods | |
Appendix D. List of kernels | |
Bibliography | |
Index. |