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Applied Multivariate Analysis / by Ira H. Bernstein, Calvin P. Garbin, Gary K. Teng

データ種別 電子ブック
出版者 New York, NY : Springer New York
出版年 1988
本文言語 英語
大きさ XIX, 508 p : online resource

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URL 電子ブック


EB0074432

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内容注記 1 Introduction and Preview
Overview
Multivariate Analysis: A Broad Definition
Multivariate Analysis: A Narrow Definition
Some Important Themes
The Role of Computers in Multivariate Analysis
Choosing a Computer Package
Problems in the Use of Computer Packages
2 Some Basic Statistical Concepts
Overview
Univariate Data Analysis
Bivariate Data Analysis
Statistical Control: A First Look at Multivariate Relations
3 Some Matrix Concepts
Overview
Basic Definitions
Basic Matrix Operations
An Application of Matrix Algebra
More about Linear Combinations
Eigenvalues and Eigenvectors
4 Multiple Regression and Correlation—Part 1. Basic concepts
Overview
Assumptions Underlying Multiple Regression
Basic Goals of Regression Analysis
The Case of Two Predictors
The Case of More Than Two Predictors
Inferential Tests
Evaluating Alternative Equations
Example 1—Perfect Prediction
Example 2—Imperfect Prediction plus a Look at Residuals
Example 3—Real Personality Assessment Data
Alternative Approaches to Data Aggregation
5 Multiple Regression and Correlation—Part 2. Advanced Applications
Overview
Nonquantitative Variables
The Simple Analysis of Variance (ANOVA)
Multiple Comparisons
Evaluation of Quantitative Relations
The Two-Way ANOVA
The Analysis of Covariance (ANCOVA)
Repeated Measures, Blocked and Matched Designs
Higher-Order Designs
6 Exploratory Factor Analysis
Overview
The Basic Factor Analytic Model
Common Uses of Factor Analysis
An Overview of the Exploratory Factoring Process
Principal Components
Factor Definition and Rotation
The Common Factor Model
An Example of the Common Factor Model
Factor Scores
Addendum: Constructing Correlation Matrices with a Desired Factor Structure
7 Confirmatory Factor Analysis
Overview
Comparing Factor Structures
Oblique Multiple Groups Tests of Weak Structure
LISREL Tests of Weak Substantive Models
LISREL Tests of Strong Substantive Models
Causal Models and Path Analysis
Causal Models and LISREL
Addendum: A Program to Obtain Oblique Multiple Groups Solutions
8 Classification Methods—Part 1. Forming Discriminant Axes
Overview
Discriminant Analysis with Two Groups and Two Predictors
Discriminant Analysis with Two Predictors and Three Groups
Discriminant Analysis—The General Case
9 Classification Methods—Part 2. Methods of Assignment
Overview
The Equal Variance Gaussian Model
The Unequal Variance Gaussian Model
Other Signal Detection Models
Strategies for Individual Classification
Alternative Strategies—An Overview
A Numerical Example
Classification Based on Salient Variables
Discriminant Functions and Classification
Classification Based on Distance Measures
A Summary of Strategic Considerations in Classification
10 Classification Methods—Part 3. Inferential Considerations in the Manova
Overview
The Two-Group MANOVA and Hotelling’s T2
Tests of Vector Means with Multiple Groups
The Simple MANOVA with Multiple Groups
The Multivariate MANOVA
The MANCOVA
11 Profile and Canonical Analysis
Overview
Profile Similarity
Simple and Hierarchical Clustering
Canonical Analysis
12 Analysis of Scales
Overview
Properties of Individual Items
Test Reliability
Numerical Example I: A Unifactor Scale
Numerical Example II: A Two-Factor Scale
Test Validity
Appendix A—Tables of the Normal Curve
Appendix D—Tables of Orthogonal Polynomial Coefficients
Problems
References
Author Index
一般注記 Like most academic authors, my views are a joint product of my teaching and my research. Needless to say, my views reflect the biases that I have acquired. One way to articulate the rationale (and limitations) of my biases is through the preface of a truly great text of a previous era, Cooley and Lohnes (1971, p. v). They draw a distinction between mathematical statisticians whose intel­ lect gave birth to the field of multivariate analysis, such as Hotelling, Bartlett, and Wilks, and those who chose to "concentrate much of their attention on methods of analyzing data in the sciences and of interpreting the results of statistical analysis . . . . (and) . . . who are more interested in the sciences than in mathematics, among other characteristics. " I find the distinction between individuals who are temperamentally "mathe­ maticians" (whom philosophy students might call "Platonists") and "scientists" ("Aristotelians") useful as long as it is not pushed to the point where one assumes "mathematicians" completely disdain data and "scientists" are never interested in contributing to the mathematical foundations of their discipline. I certainly feel more comfortable attempting to contribute in the "scientist" rather than the "mathematician" role. As a consequence, this book is primarily written for individuals concerned with data analysis. However, as noted in Chapter 1, true expertise demands familiarity with both traditions
著者標目 *Bernstein, Ira H. author
Garbin, Calvin P. author
Teng, Gary K. author
SpringerLink (Online service)
件 名 LCSH:Statistics
FREE:Statistics
FREE:Statistics for Business/Economics/Mathematical Finance/Insurance
FREE:Statistics for Social Science, Behavorial Science, Education, Public Policy, and Law
分 類 DC23:330.015195
巻冊次 ISBN:9781461387404 REFWLINK
ISBN 9781461387404
URL http://dx.doi.org/10.1007/978-1-4613-8740-4
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