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Title:
Multivariate statistics : high-dimensional and large-sample approximations
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Publication Information:
Hoboken, New Jersey. : Wiley, 2010
Physical Description:
xviii, 533 p. ; 25 cm.
ISBN:
9780470411698

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30000010219473 QA278 F84 2010 Open Access Book Book
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Summary

Summary

A comprehensive examination of high-dimensional analysis of multivariate methods and their real-world applications

Multivariate Statistics: High-Dimensional and Large-Sample Approximations is the first book of its kind to explore how classical multivariate methods can be revised and used in place of conventional statistical tools. Written by prominent researchers in the field, the book focuses on high-dimensional and large-scale approximations and details the many basic multivariate methods used to achieve high levels of accuracy.

The authors begin with a fundamental presentation of the basic tools and exact distributional results of multivariate statistics, and, in addition, the derivations of most distributional results are provided. Statistical methods for high-dimensional data, such as curve data, spectra, images, and DNA microarrays, are discussed. Bootstrap approximations from a methodological point of view, theoretical accuracies in MANOVA tests, and model selection criteria are also presented. Subsequent chapters feature additional topical coverage including:

High-dimensional approximations of various statistics High-dimensional statistical methods Approximations with computable error bound Selection of variables based on model selection approach Statistics with error bounds and their appearance in discriminant analysis, growth curve models, generalized linear models, profile analysis, and multiple comparison

Each chapter provides real-world applications and thorough analyses of the real data. In addition, approximation formulas found throughout the book are a useful tool for both practical and theoretical statisticians, and basic results on exact distributions in multivariate analysis are included in a comprehensive, yet accessible, format.

Multivariate Statistics is an excellent book for courses on probability theory in statistics at the graduate level. It is also an essential reference for both practical and theoretical statisticians who are interested in multivariate analysis and who would benefit from learning the applications of analytical probabilistic methods in statistics.


Author Notes

Yasunori Fujikoshi, DSc, is Professor Emeritus at Hiroshima University (Japan) and Visiting Professor in the Department of Mathematics at Chuo University (Japan). He has authored over 150 journal articles in the area of multivariate analysis.

Vladimir V. Ulyanov, DSc, is Professor in the Department of Mathematical Statistics at Moscow State University (Russia) and is the author of nearly fifty journal articles in his areas of research interest, which include weak limit theorems, probability measures on topological spaces, and Gaussian processes.

Ryoichi Shimizu, DSc, is Professor Emeritus at the Institute of Statistical Mathematics (Japan) and is the author of numerous journal articles on probability distributions.


Table of Contents

1 Multivariate Normal and Related Distributions
1.1 Random Vectors
1 1 1 Mean Vector and Covariance Matrix
1 1 2 The Characteristic Function and Distribution
1.2 Multivariate Normal Distribution
1 2 1 Bivariate Normal Distribution
1 2 2 Definition
1 2 3 Some Properties
1.3 Spherical and Elliptical Distributions
1.4 Multivariate Cumulants
1.5 Problems
2 Wishart Distribution
2.1 Definition
2.2 Some Basic Properties
2.3 Functions of Wishart Matrices
2.4 Cochran Theorem
2.5 Asymptotic Distributions
2.6 Problems
3 T 2 - and Lambda-Statistics
3.1 T 2 -Statistic
3 1 1 Distribution of T 2 -Statistic
3 1 2 Decomposition of T 2 or D 2
3.2 Lambda-Statistic
3 2 1 Motivation of Lambda-Statistic
3 2 2 Distribution of Lambda-Statistic
3.3 Test for Additional Information
3 3 1 Decomposition of Lambda-Statistic
3.4 Problems
4 Correlation Coefficients
4.1 Ordinary Correlation Coefficients 65
4 1 1 Population Correlation
4 1 2 Sample Correlation
4.2 Multiple Correlation Coefficient
4 2 1 Population Multiple Correlation
4 2 2 Sample Multiple Correlation
4.3 Partial Correlation
4 3 1 Population Partial Correlation
4 3 2 Sample Partial Correlation
4 3 3 Covariance Selection Model
4.4 Problems
5 Asymptotic Expansions for Multivariate Basic Statistics
5.1 Edgeworth Expansion and Its Validity
5.2 The Sample Mean Vector and Covariance Matrix
5.3 T 2 -Statistic
5 3 1 Outlines of Two Methods
5 3 2 Multivariate t-Statistic
5 3 3 Asmptotic Expansionz
5.4 Statistics with a Class of Moments
5 4 1 Large Sample Expansions
5 4 2 High-Dimensional Expansions
5.5 Perturbation Method
5.6 Cornish-Fisher Expansions
5 6 1 Expansion Formulas
5 6 2 Validity of Cornish-Fisher Expansions
5.7 Transformations for Improved Approximations
5.8 Bootstrap Approximations
5.9 High-dimensional Approximations
5 9 1 Limiting Spectral Distribution
5 9 2 Central Limit Theorem
5 9 3 Martingale Limit Theorem
5.10 Problems
6 MANOVA Models
6.1 Multivariate One-Way Analysis of Variance
6.2 Multivariate Two-Way Analysis of Variance
6.3 MANOVA Tests
6 3 1 Test Criteria
6 3 2 Large-Sample Approximations
6 3 3 Comparison of Powers
6 3 4 High-Dimensional Approximations
6.4 Approximations under Nonnormality
6 4 1 Asymptotic Expansions
6 4 2 Bootstrap Tests158
6.5 Distributions of Characteristic Roots
6 5 1 Exact Distributions
6 5 2 Large-Sample Case
6 5 3 High-Dimensional Case
6.6 Tests for Dimensionality
6 6 1 Three Test Criteria
6 6 2 Large-Sample and High-Dimensional Asymptotics
6.7 High-Dimensional Tests
6.8 Problems
7 Multivariate Regression
7.1 Multivariate Linear Regression Model
7.2 Statistical Inference
7.3 Selection of Variables
7 3 1 Stepwise Procedure
7 3 2 Cp Criterion
7 3 3 AIC Criterion
7 3 4 Numerical Example
7.4 Principal Component Regression
7.5 Selection of Response Variables
7.6 General Linear Hypotheses and Confidence Intervals
7.7 Problems201
8 Classical and High-Dimensional Tests for Covariance Matrices
8.1 Specified Covariance Matrix
8 1 1 Likelihood Ratio Test and Moments
8 1 2 Asymptotitc Expansions
8 1 3 High-Dimensional Tests
8.2 Sphericity
8 2 1 Likelihood Ratio Tests and Moments
8 2 2 Asymptotic Expansions
8 2 3 High-Dimensional Tests
8.3 Intraclass Covariance Struture
8 3 1 Likelihood Ratio Tests and Moments
8 3 2 Asymptotic Expansions
8 3 3 Numerical Accuracy
8.4 Test for Independence
8 4 1 Likelihood Ratio Tests and Moments
8 4 2 Asymptotic Expansions
8 4 3 High-Dimensional Tests
8.5 Test for Equality of Several Covariance Matrices
8 5 1 Likelihood Ratio Test and Moments
8 5 2 Asymptotic Expansions
8 5 3 High-dimensional Tests
8.6 Problems
9 Discriminant Analysis
9.1 Classification Rules for Known Distributions
9.2 Sample Classification Rules for Normal Populations
9 2 1 Two Normal Populations with ?1 = ?2
9 2 2 Case of Several Normal Populations
9.3 Probabilities of Misclassications
9 3 1 W-Rule
9 3 2 Z-Rule
9 3 3 High-Dimensional Asymptotic Results
9.4 Canonical Discriminant Analysis
9 4 1 Canonical Dicriminant Method
9 4 2 Test for Additional Information
9 4 3 Selection of Variables
9 4 4 Estimation of Dimensionality
9.5 Regression Approach
9.6 High-Dimensional Approach
9.7 Problems
10 Principal Component Analysis
10.1 Definition of Principal Components
10.2 Optimality of Principal Components
10.3 Sample Principal Components
10.4 Distributions of the Characteristic Roots
10.5 Model Selection Approach for Covariance Structures
10 5 1 A General Approach
10 5 2 Models for Equality of the Smaller Roots
10.6 Methods Related to Principal Components
10 6 1 Fixed principal component model
10 6 2 Random Effect Principal Components Model
10.7 Problem
11 Canonical Correlation Analysis
11.1 Definition of Population Canonical Correlations and Variables
11.2 Sample Canonical Correlations
11.3 Distributions of Canonical Correlations
11 3 1 Distributional Reduction
11 3 2 Large-Sample Asymptotic
11 3 3 High-Dimensional Asymptotic Distributions
11 3 4 Fisher's z-Transformation
11.4 Inference for Dimensionality
11 4 1 Test of Dimensionality
11 4 2 Estimation of Dimensionality
11.5 Selection of Variables
11 5 1 Test for Redundancy
11 5 2 Selection of Variables
11.6 Problem
12 Growth Curve Analysis
12.1 Growth Curve Model
12.2 Statistical Inference - One Group
12 2 1 Test for Adequacy
12 2 2 Estimation and Test
12 2 3 Confidence Intervals
12.3 Statistical Methods - Several Groups
12.4 Derivation of Statistical Inference
12 4 1 A General Multivariate Linear Model
12 4 2 Estimation
12 4 3 LR Tests for General Linear Hypotheses
12 4 4 Confidence Intervals
12.5 Model Selection
12 5 1 AIC and CAIC
12 5 2 Deivation of CAIC
12 5 3 An Extended Growth Curve Model
13 Theory of Approximation to the Distribution of Scale Mixture
13.1 Introduction
13.2 Approximating Scale Mixture of Distributions
13 2 1 General Theory
13 2 2 Scale Mixed Normal
13 2 3 Scale Mixed Gamma
13.3 Error Bounds Evaluated in L1-Norm
13 3 1 Some Basic Results
13 3 2 Scale Mixed Normal Density
13 3 3 Scale Mixed Gamma Density
13 3 4 Scale Mixture of ? 2 (q)
13.4 Multivariate Scale Mixtures
13 4 1 General Theory
13 4 2 Normal Case
13 4 3 Gamma Case
13 4 4 Problems
14 Basic Theory of Approximation to Some Related Distributions
14.1 Location and Scale Mixtures
14.2 The maximum of Multivariate t- and F-variables
14.3 Scale Mixtures of the F-distribution
14.4 Non-Uniform Error Bounds
14.5 Methof of Characterixtic Functions
15 Error Bounds for Approximations of Some Multivariate Tests
15.1 Multivariate Scale Mixture and MANOVA Tests
15.2 A Function of Multivariate Scale Mixture
15.3 Hotelling's T 2 0 -Statistic
15.4 Wilk's Lambda Distribution
15 4 1 Univariate Case
15 4 2 Multivariate Case
16 Error Bounds for Approximations of Some Other Statistics
16.1 Linear Discriminant Function
16 1 1 Representation as Location and Scale Mixture
16 1 2 Large Sample Approximations
16 1 3 High Dimensional Approximations
16 1 4 Some Related Topics
16.2 Profile Analysis
16 2 1 Prallelism Model and MLE
16 2 2 Distributions of ^?
16 2 3 Confidence Interval for ?
16.3 Estimators in the Growth Curve Model
16 3 1 Growth Curve Model _ Error Bounds
16 3 2 Distribution of the Bi-Linear Form
16.4 Generalized least squares estimators
16.5 Problems
A Appendix: Some Results on Matrices
A.1 Some Results on Matrices
A.1.1 Determinants and Inverse Matrices
A.1.2 Characteristic Roots and Vectors
A.1.3 Matrix Factorizations
A.1.4 Idenpotent Matrices
A.2 Inequalities and Max-min Problems
A.3 Jacobians of transformations
Bibliography
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