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Graham Dunn is Professor of Biomedical Statistics and Head of the Biostatistics Group within the School of Epidemiology and Health Sciences, University of Manchester, UK
Multivariate data and multivariate statistics | |
Introduction | |
Types of data | |
Basic multivariate statistics | |
The aims of multivariate analysis | |
Exploring multivariate data graphically | |
Introduction | |
The scatterplot | |
The scatterplot matrix | |
Enhancing the scatterplot | |
Coplots and trellis graphics | |
Checking distributional assumptions using probability plots | |
Summary | |
Exercises | |
Principal components analysis | |
Introduction | |
Algebraic basics of principal components | |
Rescaling principal components | |
Calculating principal component scores | |
Choosing the number of components | |
Two simple examples of principal components analysis | |
More complex examples of the application of principal components analysis | |
Using principal components analysis to select a subset of variables | |
Using the last few principal components | |
The biplot | |
Geometrical interpretation of principal components analysis | |
Projection pursuit | |
Summary | |
Exercises | |
Correspondence analysis | |
Introduction | |
A simple example of correspondence analysis | |
Correspondence analysis for two-dimensional contingency tables | |
Three applications of correspondence analysis | |
Multiple correspondence analysis | |
Summary | |
Exercises | |
Multidimensional scaling | |
Introduction | |
Proximity matrices and examples of multidimensional scaling | |
Metric least-squares multidimensional scaling | |
Non-metric multidimensional scaling | |
Non-Euclidean metrics | |
Three-way multidimensional scaling | |
Inference in multidimensional scaling | |
Summary | |
Exercises | |
Cluster analysis | |
Introduction | |
Agglomerative hierarchical clustering techniques | |
Optimization methods | |
Finite mixture models for cluster analysis | |
Summary | |
Exercises | |
The generalized linear model | |
Linear models | |
Non-linear models | |
Link functions and error distributions in the generalized linear model | |
Summary | |
Exercises | |
Regression and the analysis of variance | |
Introduction | |
Least-squares estimation for regression and analysis of variance models | |
Direct and indirect effects | |
Summary | |
Exercises | |
Log-linear and logistic models for categorical multivariate data | |
Introduction | |
Maximum likelihood estimation for log-linear and linear-logistic models | |
Transition models for repeated binary response measures | |
Summary | |
Exercises | |
Models for multivariate response variables | |
Introduction | |
Repeated quantitative measures | |
Multivariate tests | |
Random effects models for longitudinal data | |
Logistic models for multivariate binary responses | |
Marginal models for repeated binary response measures | |
Marginal modelling using generalized estimating equations | |
Random effects models for multivariate repeated binary response measures | |
Summary | |
Exercises | |
Discrimination, classification and pattern recognition | |
Introduction | |
A simple example | |
Some examples of allocation rules | |
Fisher's linear discriminant function | |
Assessing the performance of a discriminant function | |
Quadratic discriminant functions | |
More than two groups | |
Logistic discrimination | |
Selecting variables | |
Other methods for deriving classification rules | |
Pattern recognition and neural networks | |
Summary | |
Exercises | |
Exploratory factor analysis | |
Introduction | |
The basic factor analysis model | |
Estimating the parameters in the factor analysis model | |
Rotation of factors | |
Some examples of the application of factor analysis | |
Estimating factor scores | |
Factor analysis with categorical variables | |
Factor analysis and principal components analysis compared | |
Summary | |
Exercises | |
Confirmatory factor analysis and covariance structure models | |
Introduction | |
Path analysis and path diagrams | |
Estimation of the parameters in structural equation models | |
A simple covariance structure model and identification | |
Assessing the fit of a model | |
Some examples of fitting confirmatory factor analysis models | |
Structural equation models | |
Causal models and latent variables: myths and realities | |
Summary | |
Exercises | |
Appendices | |
Software packages | |
General-purpose packages | |
More specialized packages | |
Missing values | |
Answers to selected exercises | |
References | |
Index | |
Table of Contents provided by Publisher. All Rights Reserved. |
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