2nd Edition. — Boca Raton: CRC Press, 2016. — 632 p. — e-ISBN: 978-1-4987-7405-5
Probability
Random variables and expectations
Continuous distributions
The binomial distribution
The multinomial distribution
One SampleExample and introduction
Parametric inference about mu
Prediction intervals
Model testing
Checking normality
Transformations
Inference about sigma2
General Statistical InferenceModel-based testing
Inference on single parameters: assumptions
Parametric tests
Confidence intervals
P values
Validity of tests and confidence intervals
Theory of prediction intervals
Sample size determination and power
The shape of things to come
Two SamplesTwo correlated samples: Paired comparisons
Two independent samples with equal variances
Two independent samples with unequal variances
Testing equality of the variances
Contingency TablesOne binomial sample
Two independent binomial samples
One multinomial sample
Two independent multinomial samples
Several independent multinomial samples
Lancaster-Irwin partitioning
Simple Linear RegressionAn example
The simple linear regression model
The analysis of variance table
Model-based inference
Parametric inferential procedures
An alternative model
Correlation
Two-sample problems
A multiple regression
Estimation formulae for simple linear regression
Model CheckingRecognizing randomness: Simulated data with zero correlation
Checking assumptions: Residual analysis
Transformations
Lack of Fit and Nonparametric RegressionPolynomial regression
Polynomial regression and leverages
Other basis functions
Partitioning methods
Splines
Fisher's lack-of-fit test
Multiple Regression: IntroductionExample of inferential procedures
Regression surfaces and prediction
Comparing regression models
Sequential fitting
Reduced models and prediction
Partial correlation coefficients and added variable plots
Collinearity
More on model testing
Additive effects and interaction
Generalized additive models
Final comment
Diagnostics and Variable SelectionDiagnostics
Best subset model selection
Stepwise model selection
Model selection and case deletion
Lasso regression
Multiple Regression: Matrix FormulationRandom vectors
Matrix formulation of regression models
Least squares estimation of regression parameters
Inferential procedures
Residuals, standardized residuals, and leverage
Principal components regression
One-Way ANOVAExample
Theory
Regression analysis of ANOVA data
Modeling contrasts
Polynomial regression and one-way ANOVA
Weighted least squares
Multiple Comparison Methods"Fisher's" least significant difference method
Bonferroni adjustments
Scheffe's method
Studentized range methods
Summary of multiple comparison procedures
Two-Way ANOVAUnbalanced two-way analysis of variance
Modeling contrasts
Regression modeling
Homologous factors
ACOVA and InteractionsOne covariate example
Regression modeling
ACOVA and two-way ANOVA
Near replicate lack-of-fit tests
Multifactor StructuresUnbalanced three-factor analysis of variance
Balanced three-factors
Higher-order structures
Basic Experimental DesignsExperiments and causation
Technical design considerations
Completely randomized designs
Randomized complete block designs
Latin square designs
Balanced incomplete block designs
Youden squares
Analysis of covariance in designed experiments
Discussion of experimental design
Factorial TreatmentsFactorial treatment structures
Analysis
Modeling factorials Interaction in a Latin square
A balanced incomplete block design
Extensions of Latin squares
Dependent DataThe analysis of split-plot designs
A four-factor example
Multivariate analysis of variance
Random effects models
Logistic Regression: Predicting CountsModels for binomial data
Simple linear logistic regression
Model testing
Fitting logistic models Binary data
Multiple logistic regression ANOVA type logit models
Ordered categories
Log-Linear Models: Describing Count DataModels for two-factor tables
Models for three-factor tables
Estimation and odds ratios
Higher-dimensional tables
Ordered categories
Offsets
Relation to logistic models
Multinomial responses
Logistic discrimination and allocation
Exponential and Gamma Regression: Time-to-Event DataExponential regression
Gamma regression
Nonlinear RegressionIntroduction and examples
Estimation
Statistical inference
Linearizable models
Appendix A: Matrices and VectorsAppendix B:TablesExercises appear at the end of each chapter.