An Introduction to Support Vector Machines and Other Kernel-based Learning MethodsCambridge University Press, 23.3.2000 This is the first comprehensive introduction to Support Vector Machines (SVMs), a generation learning system based on recent advances in statistical learning theory. SVMs deliver state-of-the-art performance in real-world applications such as text categorisation, hand-written character recognition, image classification, biosequences analysis, etc., and are now established as one of the standard tools for machine learning and data mining. Students will find the book both stimulating and accessible, while practitioners will be guided smoothly through the material required for a good grasp of the theory and its applications. The concepts are introduced gradually in accessible and self-contained stages, while the presentation is rigorous and thorough. Pointers to relevant literature and web sites containing software ensure that it forms an ideal starting point for further study. Equally, the book and its associated web site will guide practitioners to updated literature, new applications, and on-line software. |
Kirjan sisältä
Tulokset 1 - 5 kokonaismäärästä 26
Sivu 1
... sequence, filtering email, detecting or recognising objects in machine vision, and so on. Solving each of these problems has the potential to revolutionise some aspect of our life, and for each of them machine learning algorithms could ...
... sequence, filtering email, detecting or recognising objects in machine vision, and so on. Solving each of these problems has the potential to revolutionise some aspect of our life, and for each of them machine learning algorithms could ...
Sivu 2
... sequence from which they are generated, or the classification of credit applications into those who will default and those who will repay the loan. These tasks cannot be solved by a traditional programming approach since the system ...
... sequence from which they are generated, or the classification of credit applications into those who will default and those who will repay the loan. These tasks cannot be solved by a traditional programming approach since the system ...
Sivu 4
... sequence. Certain subsequences are genes and others are not, but there is no simple way to categorise which are which. The second problem is that frequently training data are noisy and so there is no guarantee that there is an ...
... sequence. Certain subsequences are genes and others are not, but there is no simple way to categorise which are which. The second problem is that frequently training data are noisy and so there is no guarantee that there is an ...
Sivu 15
... sequence S, after a number of mistakes bounded by f^ the perceptron algorithm will find a separating hyperplane and hence halt, provided one exists. In cases where the data are not linearly separable, the algorithm will not converge: if ...
... sequence S, after a number of mistakes bounded by f^ the perceptron algorithm will find a separating hyperplane and hence halt, provided one exists. In cases where the data are not linearly separable, the algorithm will not converge: if ...
Sivu 34
Katseluoikeutesi tähän teokseen on päättynyt.
Katseluoikeutesi tähän teokseen on päättynyt.
Sisältö
1 | |
9 | |
KernelInduced Feature Spaces | 26 |
Generalisation Theory | 52 |
Optimisation Theory | 79 |
Support Vector Machines | 93 |
Implementation Techniques | 125 |
Applications of Support Vector Machines | 149 |
A Pseudocode for the SMO Algorithm | 162 |
References | 173 |
Index | 187 |
Muita painoksia - Näytä kaikki
An Introduction to Support Vector Machines and Other Kernel-based Learning ... Nello Cristianini,John Shawe-Taylor Rajoitettu esikatselu - 2000 |
An Introduction to Support Vector Machines and Other Kernel-based Learning ... Nello Cristianini,John Shawe-Taylor Esikatselu ei käytettävissä - 2000 |
Yleiset termit ja lausekkeet
1-norm soft margin algorithm analysis applied approach Bayesian bias bound Chapter choice classification computational consider constraints convergence convex corresponding datasets Definition described dual problem dual representation fat-shattering dimension feasibility gap feature mapping feature space finite Gaussian processes generalisation error geometric margin given Hence heuristics high dimensional Hilbert space hyperplane hypothesis inequality inner product space input space introduced iterative Karush-Kuhn-Tucker kernel function kernel matrix Lagrange multipliers Lagrangian learning algorithm linear functions linear learning machines loss function machine learning margin distribution margin slack vector maximal margin hyperplane maximise minimise norm objective function obtained on-line optimisation problem parameters perceptron perceptron algorithm performance positive semi-definite primal and dual quantity random examples real-valued function Remark result ridge regression Section sequence slack variables soft margin optimisation solution solve subset Support Vector Machines SVMs techniques Theorem training data training examples training points training set update Vapnik VC dimension weight vector zero