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An Introduction to Support Vector Machines

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TLDR
This book is the first comprehensive introduction to Support Vector Machines, a new generation learning system based on recent advances in statistical learning theory, and introduces Bayesian analysis of learning and relates SVMs to Gaussian Processes and other kernel based learning methods.
Abstract
This book is the first comprehensive introduction to Support Vector Machines (SVMs), a new generation learning system based on recent advances in statistical learning theory. The book also introduces Bayesian analysis of learning and relates SVMs to Gaussian Processes and other kernel based learning methods. SVMs deliver state-of-the-art performance in real-world applications such as text categorisation, hand-written character recognition, image classification, biosequences analysis, etc. Their first introduction in the early 1990s lead to a recent explosion of applications and deepening theoretical analysis, that has now established Support Vector Machines along with neural networks 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 application of these techniques. The concepts are introduced gradually in accessible and self-contained stages, though in each stage 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 will equip the practitioner to apply the techniques and an associated web site will provide pointers to updated literature, new applications, and on-line software.

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Journal ArticleDOI

Combination of independent component analysis and support vector machines for intelligent faults diagnosis of induction motors

TL;DR: The training of the SVMs is carried out using the sequential minimal optimization algorithm and the strategy of multi-class SVMs-based classification is applied to perform the faults identification and the performance of classification process due to the choice of kernel function is presented to show the excellent of characteristic ofkernel function.
Journal ArticleDOI

Maximum Likelihood Estimation of a Stochastic Integrate-and-Fire Neural Encoding Model

TL;DR: It is proved that the log-likelihood function is concave and thus has an essentially unique global maximum that can be found using gradient ascent techniques.
Journal ArticleDOI

Classifying G-protein coupled receptors with support vector machines

TL;DR: A simple nearest neighbor approach (BLAST), methods based on multiple alignments generated by a statistical profile Hidden Markov Model (HMM), and methods, including Support Vector Machines (SVMs), that transform protein sequences into fixed-length feature vectors are compared.
Journal ArticleDOI

Bayesian density regression

TL;DR: The paper considers Bayesian methods for density regression, allowing a random probability distribution to change flexibly with multiple predictors, and proposes a kernel‐based weighting scheme that incorporates weights that are dependent on the distance between subjects’ predictor values.