Description
Efnisyfirlit
- Cover
- Applied Regression Modeling
- Copyright
- Dedication
- Preface
- Acknowledgments
- Introduction
- About the Companion Website
- Chapter 1: Foundations
- 1.1 Identifying and Summarizing Data
- 1.2 Population Distributions
- 1.3 Selecting Individuals at Random—Probability
- 1.4 Random Sampling
- 1.5 Interval Estimation
- 1.6 Hypothesis Testing
- 1.7 Random Errors and Prediction
- 1.8 Chapter Summary
- Chapter 2: Simple Linear Regression
- 2.1 Probability Model for and
- 2.2 Least Squares Criterion
- 2.3 Model Evaluation
- 2.4 Model Assumptions
- 2.5 Model Interpretation
- 2.6 Estimation and Prediction
- 2.7 Chapter Summary
- Chapter 3: Multiple Linear Regression
- 3.1 Probability Model for (X1, X2, …) and Y
- 3.2 Least Squares Criterion
- 3.3 Model Evaluation
- 3.4 Model Assumptions
- 3.5 Model Interpretation
- 3.6 Estimation and Prediction
- 3.7 Chapter Summary
- Chapter 4: Regression Model Building I
- 4.1 Transformations
- 4.2 Interactions
- 4.3 Qualitative Predictors
- 4.4 Chapter Summary
- Chapter 5: Regression Model Building II
- 5.1 Influential Points
- 5.2 Regression Pitfalls
- 5.3 Model Building Guidelines
- 5.4 Model Selection
- 5.5 Model Interpretation Using Graphics
- 5.6 Chapter Summary
- Bibliography
- Glossary
- Index
- End User License Agreement




