<span>The book introduces different dimensionality reduction methods with their mathematical principles and calculation procedure. Apart typical dimensionality reduction methods, the book pay more attentions to nonlinear method discussions and makes detailed descriptions to nonlinear methods of thei
Geometric Structure of High-Dimensional Data and Dimensionality Reduction
โ Scribed by Prof. Jianzhong Wang (auth.)
- Publisher
- Springer-Verlag Berlin Heidelberg
- Year
- 2011
- Tongue
- English
- Leaves
- 362
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
"Geometric Structure of High-Dimensional Data and Dimensionality Reduction" adopts data geometry as a framework to address various methods of dimensionality reduction. In addition to the introduction to well-known linear methods, the book moreover stresses the recently developed nonlinear methods and introduces the applications of dimensionality reduction in many areas, such as face recognition, image segmentation, data classification, data visualization, and hyperspectral imagery data analysis. Numerous tables and graphs are included to illustrate the ideas, effects, and shortcomings of the methods. MATLAB code of all dimensionality reduction algorithms is provided to aid the readers with the implementations on computers.
The book will be useful for mathematicians, statisticians, computer scientists, and data analysts. It is also a valuable handbook for other practitioners who have a basic background in mathematics, statistics and/or computer algorithms, like internet search engine designers, physicists, geologists, electronic engineers, and economists.
Jianzhong Wang is a Professor of Mathematics at Sam Houston State University, U.S.A.
โฆ Table of Contents
Front Matter....Pages i-xix
Introduction....Pages 1-26
Front Matter....Pages 27-27
Preliminary Calculus on Manifolds....Pages 29-49
Geometric Structure of High-Dimensional Data....Pages 51-77
Data Models and Structures of Kernels of DR....Pages 79-91
Front Matter....Pages 93-93
Principal Component Analysis....Pages 95-114
Classical Multidimensional Scaling....Pages 115-129
Random Projection....Pages 131-148
Front Matter....Pages 149-149
Isomaps....Pages 151-180
Maximum Variance Unfolding....Pages 181-202
Locally Linear Embedding....Pages 203-220
Local Tangent Space Alignment....Pages 221-234
Laplacian Eigenmaps....Pages 235-247
Hessian Locally Linear Embedding....Pages 249-265
Diffusion Maps....Pages 267-298
Fast Algorithms for DR Approximation....Pages 299-337
Back Matter....Pages 339-356
โฆ Subjects
Data Mining and Knowledge Discovery; Probability and Statistics in Computer Science; Applications of Mathematics; Data Structures, Cryptology and Information Theory
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