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Feature Extraction

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Cover of 'Feature Extraction'

Table of Contents

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    Book Overview
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    Chapter 1 An Introduction to Feature Extraction
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    Chapter 2 Learning Machines
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    Chapter 3 Assessment Methods
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    Chapter 4 Filter Methods
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    Chapter 5 Search Strategies
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    Chapter 6 Embedded Methods
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    Chapter 7 Information-Theoretic Methods
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    Chapter 8 Ensemble Learning
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    Chapter 9 Fuzzy Neural Networks
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    Chapter 10 Design and Analysis of the NIPS2003 Challenge
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    Chapter 11 High Dimensional Classification with Bayesian Neural Networks and Dirichlet Diffusion Trees
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    Chapter 12 Ensembles of Regularized Least Squares Classifiers for High-Dimensional Problems
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    Chapter 13 Combining SVMs with Various Feature Selection Strategies
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    Chapter 14 Feature Selection with Transductive Support Vector Machines
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    Chapter 15 Variable Selection using Correlation and Single Variable Classifier Methods: Applications
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    Chapter 16 Tree-Based Ensembles with Dynamic Soft Feature Selection
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    Chapter 17 Sparse, Flexible and Efficient Modeling using L 1 Regularization
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    Chapter 18 Margin Based Feature Selection and Infogain with Standard Classifiers
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    Chapter 19 Bayesian Support Vector Machines for Feature Ranking and Selection
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    Chapter 20 Nonlinear Feature Selection with the Potential Support Vector Machine
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    Chapter 21 Combining a Filter Method with SVMs
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    Chapter 22 Feature Selection via Sensitivity Analysis with Direct Kernel PLS
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    Chapter 23 Information Gain, Correlation and Support Vector Machines
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    Chapter 24 Mining for Complex Models Comprising Feature Selection and Classification
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    Chapter 25 Combining Information-Based Supervised and Unsupervised Feature Selection
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    Chapter 26 An Enhanced Selective Naïve Bayes Method with Optimal Discretization
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    Chapter 27 An Input Variable Importance Definition based on Empirical Data Probability Distribution
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    Chapter 28 Spectral Dimensionality Reduction
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    Chapter 29 Constructing Orthogonal Latent Features for Arbitrary Loss
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    Chapter 30 Large Margin Principles for Feature Selection
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    Chapter 31 Feature Extraction for Classification of Proteomic Mass Spectra: A Comparative Study
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    Chapter 32 Sequence Motifs: Highly Predictive Features of Protein Function
Attention for Chapter 1: An Introduction to Feature Extraction
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Chapter title
An Introduction to Feature Extraction
Chapter number 1
Book title
Feature Extraction
Published by
Springer, Berlin, Heidelberg, January 2006
DOI 10.1007/978-3-540-35488-8_1
Book ISBNs
978-3-54-035487-1, 978-3-54-035488-8
Authors

Isabelle Guyon, André Elisseeff

Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 713 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 5 <1%
China 5 <1%
Brazil 5 <1%
United Kingdom 5 <1%
Germany 3 <1%
Malaysia 2 <1%
Pakistan 2 <1%
India 2 <1%
Indonesia 1 <1%
Other 13 2%
Unknown 670 94%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 183 26%
Student > Master 131 18%
Researcher 68 10%
Student > Bachelor 68 10%
Student > Doctoral Student 35 5%
Other 87 12%
Unknown 141 20%
Readers by discipline Count As %
Computer Science 256 36%
Engineering 170 24%
Agricultural and Biological Sciences 18 3%
Mathematics 16 2%
Chemistry 7 <1%
Other 82 12%
Unknown 164 23%