
Applied Multivariate Statistical Analysis and Related Topics with R
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Content
- Intro
- Applied Multivariate Statistical Analysis and Related Topics with R
- Preface
- Contents
- Chapter 1 Introduction
- 1.1 Goal of Statistics
- 1.2 Univariate Analysis
- 1.3 Multivariate Analysis
- 1.4 Multivariate Normal Distribution
- 1.5 Unsupervised Learning and Supervised Learning
- 1.6 Data Analysis Strategies and Statistical Thinking
- 1.7 Outline
- Exercises 1
- Chapter 2 Principal Components Analysis
- 2.1 The Basic Idea
- 2.2 The Principal Components
- 2.3 Choose Number of Principal Components
- 2.4 Considerations in Data Analysis
- 2.5 Examples in R
- Exercises 2
- Chapter 3 Factor Analysis
- 3.1 The Basic Idea
- 3.2 The Factor Analysis Model
- 3.3 Methods for Estimation
- 3.4 Examples in R
- Exercises 3
- Chapter 4 Discriminant Analysis and Cluster Analysis
- 4.1 Introduction
- 4.2 Discriminant Analysis
- 4.3 Cluster Analysis
- 4.4 Examples in R
- Exercises 4
- Chapter 5 Inference for a Multivariate Normal Population
- 5.1 Introduction
- 5.2 Inference for Multivariate Means
- 5.3 Inference for Covariance Matrices
- 5.4 Large Sample Inferences about a Population Mean Vector
- 5.5 Examples in R
- Exercises 5
- Chapter 6 Discrete or Categorical Multivariate Data
- 6.1 Discrete or Categorical Data
- 6.2 The Multinomial Distribution
- 6.3 Contingency Tables
- 6.4 Associations Between Discrete or Categorical Variables
- 6.5 Logit Models for Multinomial Variables
- 6.6 Loglinear Models for Contingency Tables
- 6.7 Example in R
- Exercises 6
- Chapter 7 Copula Models
- 7.1 Introduction
- 7.2 Copula Models
- 7.3 Measures of Dependence
- 7.4 Applications in Actuary and Finance
- 7.5 Applications in Longitudinal and Survival Data*
- 7.6 Example in R
- Exercises 7
- Chapter 8 Linear and Nonlinear Regression Models
- 8.1 Introduction
- 8.2 Linear Regression Models
- 8.3 Model Selection
- 8.4 Model Diagnostics
- 8.5 Data Analysis Examples with R
- 8.6 Nonlinear Regression Models
- 8.7 More on Model Selection
- Exercises 8
- Chapter 9 Generalized Linear Models
- 9.1 Introduction
- 9.2 The Exponential Family
- 9.3 The General Form of a GLM
- 9.4 Inference for GLM
- 9.5 Model Selection and Model Diagnostics
- 9.6 Logistic Regression Models
- 9.7 Poisson Regression Models
- Exercises 9
- Chapter 10 Multivariate Regression and MANOVA Models
- 10.1 Introduction
- 10.2 Multivariate Regression Models
- 10.3 MANOVA Models
- 10.4 Examples in R
- Exercises 10
- Chapter 11 Longitudinal Data, Panel Data, and Repeated Measurements
- 11.1 Introduction
- 11.2 Methods for Longitudinal Data Analysis
- 11.3 Linear Mixed Effects Models
- 11.4 GEE Models
- Exercises 11
- Chapter 12 Methods for Missing Data
- 12.1 Missing Data Mechanisms
- 12.2 Methods for Missing Data
- 12.3 Multiple Imputation Methods
- 12.4 Multiple Imputation by Chained Equations
- 12.5 The EM Algorithm
- 12.6 Example in R
- Exercises 12
- Chapter 13 Robust Multivariate Analysis
- 13.1 The Need for Robust Methods
- 13.2 General Robust Methods
- 13.3 Robust Estimates of the Mean and Standard Deviation
- 13.4 Robust Estimates of the Covariance Matrix
- 13.5 Robust PCA and Regressions
- 13.6 Examples in R
- Exercises 13
- Chapter 14 Selected Topics
- 14.1 Likelihood Methods
- 14.2 Bootstrap Methods
- 14.3 MCMC Methods and the Gibbs Sampler
- 14.4 Survival Analysis
- 14.5 Data Science, Big Data, and Data Mining
- Reference
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