Keith E Muller, Bethel A Fetterman, Ruth M Mickey, Olive Jean Dunn, Virginia A Clark
Regression and Anova: An Integrated Approach Using SAS Software + Applied Statistics: Analysis of Variance and Regression, Third Edition Set
Keith E Muller, Bethel A Fetterman, Ruth M Mickey, Olive Jean Dunn, Virginia A Clark
Regression and Anova: An Integrated Approach Using SAS Software + Applied Statistics: Analysis of Variance and Regression, Third Edition Set
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The information contained in this book has served as the basis for a graduate-level biostatistics class at the University of North Carolina at Chapel Hill. The book focuses in the General Linear Model (GLM) theory, stated in matrix terms, which provides a more compact, clear, and unified presentation of regression of ANOVA than do traditional sums of squares and scalar equations. The book contains a balanced treatment of regression and ANOVA yet is very compact. Reflecting current computational practice, most sums of squares formulas and associated theory, especially in ANOVA, are not…mehr
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The information contained in this book has served as the basis for a graduate-level biostatistics class at the University of North Carolina at Chapel Hill. The book focuses in the General Linear Model (GLM) theory, stated in matrix terms, which provides a more compact, clear, and unified presentation of regression of ANOVA than do traditional sums of squares and scalar equations. The book contains a balanced treatment of regression and ANOVA yet is very compact. Reflecting current computational practice, most sums of squares formulas and associated theory, especially in ANOVA, are not included. The text contains almost no proofs, despite the presence of a large number of basic theoretical results. Many numerical examples are provided, and include both the SAS code and equivalent mathematical representation needed to produce the outputs that are presented. All exercises involve only "real" data, collected in the course of scientific research. The book is divided into sections covering the following topics: Basic Theory Multiple Regression Model Building and Evaluation ANOVA ANCOVA
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Produktdetails
- Produktdetails
- Verlag: Wiley
- Seitenzahl: 1040
- Erscheinungstermin: 14. März 2008
- Englisch
- Abmessung: 279mm x 208mm x 64mm
- Gewicht: 2155g
- ISBN-13: 9780470388037
- ISBN-10: 047038803X
- Artikelnr.: 24951433
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
- Verlag: Wiley
- Seitenzahl: 1040
- Erscheinungstermin: 14. März 2008
- Englisch
- Abmessung: 279mm x 208mm x 64mm
- Gewicht: 2155g
- ISBN-13: 9780470388037
- ISBN-10: 047038803X
- Artikelnr.: 24951433
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
KEITH E. MULLER, PhD, is Professor and Director of the Division of Biostatistics in the Department of Epidemiology and Health Policy Research in the College of Medicine at the University of Florida in Gainesville, as well as Professor Emeritus of Biostatistics at The University of North Carolina at Chapel Hill where the book was written. BETHEL A. FETTERMAN, PhD, is Research Associate Professor of Biostatistics at The University of North Carolina at Chapel Hill.
Regression and ANOVA: An Integrated Approach Using SAS Software
Preface.
Examples and Limits of the GLM.
Statement of the Model, Estimation, and Testing.
Some Distributions for the GLM.
Multiple Regression: General Considerations.
Testing Hypotheses in Multiple Regression.
Correlations.
GLM Assumption Diagnostics.
GLM Computation Diagnostics.
Polynomial Regression.
Transformations.
Selecting the Best Model.
Coding Schemes for Regression.
One-Way ANOVA.
Complete, Two-Way Factorial ANOVA.
Special Cases of Two-Way ANOVA and Random Effects Basics.
The Full Model in Every Cell (ANCOVA as a Special Case).
Understanding and Computing Power for the GLM.
Appendix A. Matrix Algebra for Linear Models.
Appendix B. Statistical Tables.
Appendix C. Study Guide for Linear Model Theory.
Appendix D. Homework and Example Data.
Appendix E. Introduction to SAS/IML.
Appendix F. A Brief Manual to LINMOD.
Appendix G. SAS/IML Power Program User's Guide.
Appendix H. Regression Model Selection Data.
References.
Index.
Applied Statistics: Analysis of Variance and Regression, 3rd Edition
Preface.
1. Data Screening.
1.1 Variables and Their Classification.
1.2 Describing the Data.
1.3 Departures from Assumptions.
1.4 Summary.
2. One-Way Analysis of Variance Design.
2.1 One-Way Analysis of Variance with Fixed Effects.
2.2 One-Way Analysis of Variance with Random Effects.
2.3 Designing an Observational Study or Experiment.
2.4 Checking if the Data Fit the One-Way ANOVA Model.
2.5 What to Do if the Data Do Not Fit the Model.
2.6 Presentation and Interpretation of Results.
2.7 Summary.
3. Estimation and Simultaneous Inference.
3.1 Estimation for Single Population Means.
3.2 Estimation for Linear Combinations of Population Means.
3.3 Simultaneous Statistical Inference.
3.4 Inference for Variance Components.
3.5 Presentation and Interpretation of Results.
3.6 Summary.
4. Hierarchical or Nested Design.
4.1 Example.
4.2 The Model.
4.3 Analysis of Variance Table and F Tests.
4.4 Estimation of Parameters.
4.5 Inferences with Unequal Sample Sizes.
4.6 Checking If the Data Fit the Model.
4.7 What to Do If the Data Don't Fit the Model.
4.8 Designing a Study.
4.9 Summary.
5. Two Crossed Factors: Fixed Effects and Equal Sample Sizes.
5.1 Example.
5.2 The Model.
5.3 Interpretation of Models and Interaction.
5.4 Analysis of Variance and F Tests.
5.5 Estimates of Parameters and Confidence Intervals.
5.6 Designing a Study.
5.7 Presentation and Interpretation of Results.
5.8 Summary.
6 Randomized Complete Block Design.
6.1 Example.
6.2 The Randomized Complete Block Design.
6.3 The Model.
6.4 Analysis of Variance Table and F Tests.
6.5 Estimation of Parameters and Confidence Intervals.
6.6 Checking If the Data Fit the Model.
6.7 What to Do if the Data Don't Fit the Model.
6.8 Designing a Randomized Complete Block Study.
6.9 Model Extensions.
6.10 Summary.
7. Two Crossed Factors: Fixed Effects and Unequal Sample Sizes.
7.1 Example.
7.2 The Model.
7.3 Analysis of Variance and F Tests.
7.4 Estimation of Parameters and Confidence Intervals.
7.5 Checking If the Data Fit the Two-Way Model.
7.6 What To Do If the Data Don't Fit the Model.
7.7 Summary.
8. Crossed Factors: Mixed Models.
8.1 Example.
8.2 The Mixed Model.
8.3 Estimation of Fixed Effects.
8.4 Analysis of Variance.
8.5 Estimation of Variance Components.
8.6 Hypothesis Testing.
8.7 Confidence Intervals for Means and Variance Components.
8.8 Comments on Available Software.
8.9 Extensions of the Mixed Model.
8.10 Summary.
9. Repeated Measures Designs.
9.1 Repeated Measures for a Single Population.
9.2 Repeated Measures with Several Populations.
9.3 Checking if the Data Fit the Repeated Measures Model.
9.4 What to Do if the Data Don't Fit the Model.
9.5 General Comments on Repeated Measures Analyses.
9.6 Summary.
10. Linear Regression: Fixed X Model.
10.1 Example.
10.2 Fitting a Straight Line.
10.3 The Fixed X Model.
10.4 Estimation of Model Parameters and Standard Errors.
10.5 Inferences for Model Parameters: Confidence Intervals.
10.6 Inference for Model Parameters: Hypothesis Testing.
10.7 Checking if the Data Fit the Regression Model.
10.8 What to Do if the Data Don't Fit the Model.
10.9 Practical Issues in Designing a Regression Study.
10.10 Comparison with One-Way ANOVA.
10.11 Summary.
11. Linear Regression: Random X Model and Correlation.
11.1 Example.
11.2 Summarizing the Relationship Between X and Y.
11.3 Inferences for the Regression of Y and X.
11.4 The Bivariate Normal Model.
11.5 Checking if the Data Fit the Random X Regression Model.
11.6 What to Do if the Data Don't Fit the Random X Model.
11.7 Summary.
12. Multiple Regression.
12.1 Example.
12.2 The Sample Regression Plane.
12.3 The Multiple Regression Model.
12.4 Parameters Standard Errors, and Confidence Intervals.
12.5 Hypothesis Testing.
12.6 Checking If the Data Fit the Multiple Regression Model.
12.7 What to Do If the Data Don't Fit the Model.
12.8 Summary.
13. Multiple and Partial Correlation.
13.1 Example.
13.2 The Sample Multiple Correlation Coefficient.
13.3 The Sample Partial Correlation Coefficient.
13.4 The Joint Distribution Model.
13.5 Inferences for the Multiple Correlation Coefficient.
13.6 Inferences for Partial Correlation Coefficients.
13.7 Checking If the Data Fit the Joint Normal Model.
13.8 What to Do If the Data Don't Fit the Model.
13.9 Summary.
14. Miscellaneous Topics in Regression.
14.1 Models with Dummy Variables.
14.2 Models with Interaction Terms.
14.3 Models with Polynomial Terms.
14.4 Variable Selection.
14.5 Summary.
15. Analysis of Covariance.
15.1 Example.
15.2 The ANCOVA Model.
15.3 Estimation of Model Parameters.
15.4 Hypothesis Tests.
15.5 Adjusted Means.
15.6 Checking If the Data Fit the ANCOVA Model.
15.7 What to Do if the Data Don't Fit the Model.
15.8 ANCOVA in Observational Studies.
15.9 What Makes a Good Covariate.
15.10 Measurement Error.
15.11 ANCOVA versus Other Methods of Adjustment.
15.12 Comments on Statistical Software.
15.13 Summary.
16. Summaries, Extensions, and Communication.
16.1 Summaries and Extensions of Models.
16.2 Communication of Statistics in the Context of Research Project.
Appendix A.
A.1 Expected Values and Parameters.
A.2 Linear Combinations of Variables and Their Parameters.
A.3 Balanced One-Way ANOVA, Expected Mean Squares.
A.4 Balanced One-Way ANOVA, Random Effects.
A.5 Balanced Nested Model.
A.6 Mixed Model.
A.7 Simple Linear Regression-Derivation of Least Squares Estimators.
A.8 Derivation of Variance Estimates from Simple Linear Regression.
Appendix B.
Index.
Preface.
Examples and Limits of the GLM.
Statement of the Model, Estimation, and Testing.
Some Distributions for the GLM.
Multiple Regression: General Considerations.
Testing Hypotheses in Multiple Regression.
Correlations.
GLM Assumption Diagnostics.
GLM Computation Diagnostics.
Polynomial Regression.
Transformations.
Selecting the Best Model.
Coding Schemes for Regression.
One-Way ANOVA.
Complete, Two-Way Factorial ANOVA.
Special Cases of Two-Way ANOVA and Random Effects Basics.
The Full Model in Every Cell (ANCOVA as a Special Case).
Understanding and Computing Power for the GLM.
Appendix A. Matrix Algebra for Linear Models.
Appendix B. Statistical Tables.
Appendix C. Study Guide for Linear Model Theory.
Appendix D. Homework and Example Data.
Appendix E. Introduction to SAS/IML.
Appendix F. A Brief Manual to LINMOD.
Appendix G. SAS/IML Power Program User's Guide.
Appendix H. Regression Model Selection Data.
References.
Index.
Applied Statistics: Analysis of Variance and Regression, 3rd Edition
Preface.
1. Data Screening.
1.1 Variables and Their Classification.
1.2 Describing the Data.
1.3 Departures from Assumptions.
1.4 Summary.
2. One-Way Analysis of Variance Design.
2.1 One-Way Analysis of Variance with Fixed Effects.
2.2 One-Way Analysis of Variance with Random Effects.
2.3 Designing an Observational Study or Experiment.
2.4 Checking if the Data Fit the One-Way ANOVA Model.
2.5 What to Do if the Data Do Not Fit the Model.
2.6 Presentation and Interpretation of Results.
2.7 Summary.
3. Estimation and Simultaneous Inference.
3.1 Estimation for Single Population Means.
3.2 Estimation for Linear Combinations of Population Means.
3.3 Simultaneous Statistical Inference.
3.4 Inference for Variance Components.
3.5 Presentation and Interpretation of Results.
3.6 Summary.
4. Hierarchical or Nested Design.
4.1 Example.
4.2 The Model.
4.3 Analysis of Variance Table and F Tests.
4.4 Estimation of Parameters.
4.5 Inferences with Unequal Sample Sizes.
4.6 Checking If the Data Fit the Model.
4.7 What to Do If the Data Don't Fit the Model.
4.8 Designing a Study.
4.9 Summary.
5. Two Crossed Factors: Fixed Effects and Equal Sample Sizes.
5.1 Example.
5.2 The Model.
5.3 Interpretation of Models and Interaction.
5.4 Analysis of Variance and F Tests.
5.5 Estimates of Parameters and Confidence Intervals.
5.6 Designing a Study.
5.7 Presentation and Interpretation of Results.
5.8 Summary.
6 Randomized Complete Block Design.
6.1 Example.
6.2 The Randomized Complete Block Design.
6.3 The Model.
6.4 Analysis of Variance Table and F Tests.
6.5 Estimation of Parameters and Confidence Intervals.
6.6 Checking If the Data Fit the Model.
6.7 What to Do if the Data Don't Fit the Model.
6.8 Designing a Randomized Complete Block Study.
6.9 Model Extensions.
6.10 Summary.
7. Two Crossed Factors: Fixed Effects and Unequal Sample Sizes.
7.1 Example.
7.2 The Model.
7.3 Analysis of Variance and F Tests.
7.4 Estimation of Parameters and Confidence Intervals.
7.5 Checking If the Data Fit the Two-Way Model.
7.6 What To Do If the Data Don't Fit the Model.
7.7 Summary.
8. Crossed Factors: Mixed Models.
8.1 Example.
8.2 The Mixed Model.
8.3 Estimation of Fixed Effects.
8.4 Analysis of Variance.
8.5 Estimation of Variance Components.
8.6 Hypothesis Testing.
8.7 Confidence Intervals for Means and Variance Components.
8.8 Comments on Available Software.
8.9 Extensions of the Mixed Model.
8.10 Summary.
9. Repeated Measures Designs.
9.1 Repeated Measures for a Single Population.
9.2 Repeated Measures with Several Populations.
9.3 Checking if the Data Fit the Repeated Measures Model.
9.4 What to Do if the Data Don't Fit the Model.
9.5 General Comments on Repeated Measures Analyses.
9.6 Summary.
10. Linear Regression: Fixed X Model.
10.1 Example.
10.2 Fitting a Straight Line.
10.3 The Fixed X Model.
10.4 Estimation of Model Parameters and Standard Errors.
10.5 Inferences for Model Parameters: Confidence Intervals.
10.6 Inference for Model Parameters: Hypothesis Testing.
10.7 Checking if the Data Fit the Regression Model.
10.8 What to Do if the Data Don't Fit the Model.
10.9 Practical Issues in Designing a Regression Study.
10.10 Comparison with One-Way ANOVA.
10.11 Summary.
11. Linear Regression: Random X Model and Correlation.
11.1 Example.
11.2 Summarizing the Relationship Between X and Y.
11.3 Inferences for the Regression of Y and X.
11.4 The Bivariate Normal Model.
11.5 Checking if the Data Fit the Random X Regression Model.
11.6 What to Do if the Data Don't Fit the Random X Model.
11.7 Summary.
12. Multiple Regression.
12.1 Example.
12.2 The Sample Regression Plane.
12.3 The Multiple Regression Model.
12.4 Parameters Standard Errors, and Confidence Intervals.
12.5 Hypothesis Testing.
12.6 Checking If the Data Fit the Multiple Regression Model.
12.7 What to Do If the Data Don't Fit the Model.
12.8 Summary.
13. Multiple and Partial Correlation.
13.1 Example.
13.2 The Sample Multiple Correlation Coefficient.
13.3 The Sample Partial Correlation Coefficient.
13.4 The Joint Distribution Model.
13.5 Inferences for the Multiple Correlation Coefficient.
13.6 Inferences for Partial Correlation Coefficients.
13.7 Checking If the Data Fit the Joint Normal Model.
13.8 What to Do If the Data Don't Fit the Model.
13.9 Summary.
14. Miscellaneous Topics in Regression.
14.1 Models with Dummy Variables.
14.2 Models with Interaction Terms.
14.3 Models with Polynomial Terms.
14.4 Variable Selection.
14.5 Summary.
15. Analysis of Covariance.
15.1 Example.
15.2 The ANCOVA Model.
15.3 Estimation of Model Parameters.
15.4 Hypothesis Tests.
15.5 Adjusted Means.
15.6 Checking If the Data Fit the ANCOVA Model.
15.7 What to Do if the Data Don't Fit the Model.
15.8 ANCOVA in Observational Studies.
15.9 What Makes a Good Covariate.
15.10 Measurement Error.
15.11 ANCOVA versus Other Methods of Adjustment.
15.12 Comments on Statistical Software.
15.13 Summary.
16. Summaries, Extensions, and Communication.
16.1 Summaries and Extensions of Models.
16.2 Communication of Statistics in the Context of Research Project.
Appendix A.
A.1 Expected Values and Parameters.
A.2 Linear Combinations of Variables and Their Parameters.
A.3 Balanced One-Way ANOVA, Expected Mean Squares.
A.4 Balanced One-Way ANOVA, Random Effects.
A.5 Balanced Nested Model.
A.6 Mixed Model.
A.7 Simple Linear Regression-Derivation of Least Squares Estimators.
A.8 Derivation of Variance Estimates from Simple Linear Regression.
Appendix B.
Index.
Regression and ANOVA: An Integrated Approach Using SAS Software
Preface.
Examples and Limits of the GLM.
Statement of the Model, Estimation, and Testing.
Some Distributions for the GLM.
Multiple Regression: General Considerations.
Testing Hypotheses in Multiple Regression.
Correlations.
GLM Assumption Diagnostics.
GLM Computation Diagnostics.
Polynomial Regression.
Transformations.
Selecting the Best Model.
Coding Schemes for Regression.
One-Way ANOVA.
Complete, Two-Way Factorial ANOVA.
Special Cases of Two-Way ANOVA and Random Effects Basics.
The Full Model in Every Cell (ANCOVA as a Special Case).
Understanding and Computing Power for the GLM.
Appendix A. Matrix Algebra for Linear Models.
Appendix B. Statistical Tables.
Appendix C. Study Guide for Linear Model Theory.
Appendix D. Homework and Example Data.
Appendix E. Introduction to SAS/IML.
Appendix F. A Brief Manual to LINMOD.
Appendix G. SAS/IML Power Program User's Guide.
Appendix H. Regression Model Selection Data.
References.
Index.
Applied Statistics: Analysis of Variance and Regression, 3rd Edition
Preface.
1. Data Screening.
1.1 Variables and Their Classification.
1.2 Describing the Data.
1.3 Departures from Assumptions.
1.4 Summary.
2. One-Way Analysis of Variance Design.
2.1 One-Way Analysis of Variance with Fixed Effects.
2.2 One-Way Analysis of Variance with Random Effects.
2.3 Designing an Observational Study or Experiment.
2.4 Checking if the Data Fit the One-Way ANOVA Model.
2.5 What to Do if the Data Do Not Fit the Model.
2.6 Presentation and Interpretation of Results.
2.7 Summary.
3. Estimation and Simultaneous Inference.
3.1 Estimation for Single Population Means.
3.2 Estimation for Linear Combinations of Population Means.
3.3 Simultaneous Statistical Inference.
3.4 Inference for Variance Components.
3.5 Presentation and Interpretation of Results.
3.6 Summary.
4. Hierarchical or Nested Design.
4.1 Example.
4.2 The Model.
4.3 Analysis of Variance Table and F Tests.
4.4 Estimation of Parameters.
4.5 Inferences with Unequal Sample Sizes.
4.6 Checking If the Data Fit the Model.
4.7 What to Do If the Data Don't Fit the Model.
4.8 Designing a Study.
4.9 Summary.
5. Two Crossed Factors: Fixed Effects and Equal Sample Sizes.
5.1 Example.
5.2 The Model.
5.3 Interpretation of Models and Interaction.
5.4 Analysis of Variance and F Tests.
5.5 Estimates of Parameters and Confidence Intervals.
5.6 Designing a Study.
5.7 Presentation and Interpretation of Results.
5.8 Summary.
6 Randomized Complete Block Design.
6.1 Example.
6.2 The Randomized Complete Block Design.
6.3 The Model.
6.4 Analysis of Variance Table and F Tests.
6.5 Estimation of Parameters and Confidence Intervals.
6.6 Checking If the Data Fit the Model.
6.7 What to Do if the Data Don't Fit the Model.
6.8 Designing a Randomized Complete Block Study.
6.9 Model Extensions.
6.10 Summary.
7. Two Crossed Factors: Fixed Effects and Unequal Sample Sizes.
7.1 Example.
7.2 The Model.
7.3 Analysis of Variance and F Tests.
7.4 Estimation of Parameters and Confidence Intervals.
7.5 Checking If the Data Fit the Two-Way Model.
7.6 What To Do If the Data Don't Fit the Model.
7.7 Summary.
8. Crossed Factors: Mixed Models.
8.1 Example.
8.2 The Mixed Model.
8.3 Estimation of Fixed Effects.
8.4 Analysis of Variance.
8.5 Estimation of Variance Components.
8.6 Hypothesis Testing.
8.7 Confidence Intervals for Means and Variance Components.
8.8 Comments on Available Software.
8.9 Extensions of the Mixed Model.
8.10 Summary.
9. Repeated Measures Designs.
9.1 Repeated Measures for a Single Population.
9.2 Repeated Measures with Several Populations.
9.3 Checking if the Data Fit the Repeated Measures Model.
9.4 What to Do if the Data Don't Fit the Model.
9.5 General Comments on Repeated Measures Analyses.
9.6 Summary.
10. Linear Regression: Fixed X Model.
10.1 Example.
10.2 Fitting a Straight Line.
10.3 The Fixed X Model.
10.4 Estimation of Model Parameters and Standard Errors.
10.5 Inferences for Model Parameters: Confidence Intervals.
10.6 Inference for Model Parameters: Hypothesis Testing.
10.7 Checking if the Data Fit the Regression Model.
10.8 What to Do if the Data Don't Fit the Model.
10.9 Practical Issues in Designing a Regression Study.
10.10 Comparison with One-Way ANOVA.
10.11 Summary.
11. Linear Regression: Random X Model and Correlation.
11.1 Example.
11.2 Summarizing the Relationship Between X and Y.
11.3 Inferences for the Regression of Y and X.
11.4 The Bivariate Normal Model.
11.5 Checking if the Data Fit the Random X Regression Model.
11.6 What to Do if the Data Don't Fit the Random X Model.
11.7 Summary.
12. Multiple Regression.
12.1 Example.
12.2 The Sample Regression Plane.
12.3 The Multiple Regression Model.
12.4 Parameters Standard Errors, and Confidence Intervals.
12.5 Hypothesis Testing.
12.6 Checking If the Data Fit the Multiple Regression Model.
12.7 What to Do If the Data Don't Fit the Model.
12.8 Summary.
13. Multiple and Partial Correlation.
13.1 Example.
13.2 The Sample Multiple Correlation Coefficient.
13.3 The Sample Partial Correlation Coefficient.
13.4 The Joint Distribution Model.
13.5 Inferences for the Multiple Correlation Coefficient.
13.6 Inferences for Partial Correlation Coefficients.
13.7 Checking If the Data Fit the Joint Normal Model.
13.8 What to Do If the Data Don't Fit the Model.
13.9 Summary.
14. Miscellaneous Topics in Regression.
14.1 Models with Dummy Variables.
14.2 Models with Interaction Terms.
14.3 Models with Polynomial Terms.
14.4 Variable Selection.
14.5 Summary.
15. Analysis of Covariance.
15.1 Example.
15.2 The ANCOVA Model.
15.3 Estimation of Model Parameters.
15.4 Hypothesis Tests.
15.5 Adjusted Means.
15.6 Checking If the Data Fit the ANCOVA Model.
15.7 What to Do if the Data Don't Fit the Model.
15.8 ANCOVA in Observational Studies.
15.9 What Makes a Good Covariate.
15.10 Measurement Error.
15.11 ANCOVA versus Other Methods of Adjustment.
15.12 Comments on Statistical Software.
15.13 Summary.
16. Summaries, Extensions, and Communication.
16.1 Summaries and Extensions of Models.
16.2 Communication of Statistics in the Context of Research Project.
Appendix A.
A.1 Expected Values and Parameters.
A.2 Linear Combinations of Variables and Their Parameters.
A.3 Balanced One-Way ANOVA, Expected Mean Squares.
A.4 Balanced One-Way ANOVA, Random Effects.
A.5 Balanced Nested Model.
A.6 Mixed Model.
A.7 Simple Linear Regression-Derivation of Least Squares Estimators.
A.8 Derivation of Variance Estimates from Simple Linear Regression.
Appendix B.
Index.
Preface.
Examples and Limits of the GLM.
Statement of the Model, Estimation, and Testing.
Some Distributions for the GLM.
Multiple Regression: General Considerations.
Testing Hypotheses in Multiple Regression.
Correlations.
GLM Assumption Diagnostics.
GLM Computation Diagnostics.
Polynomial Regression.
Transformations.
Selecting the Best Model.
Coding Schemes for Regression.
One-Way ANOVA.
Complete, Two-Way Factorial ANOVA.
Special Cases of Two-Way ANOVA and Random Effects Basics.
The Full Model in Every Cell (ANCOVA as a Special Case).
Understanding and Computing Power for the GLM.
Appendix A. Matrix Algebra for Linear Models.
Appendix B. Statistical Tables.
Appendix C. Study Guide for Linear Model Theory.
Appendix D. Homework and Example Data.
Appendix E. Introduction to SAS/IML.
Appendix F. A Brief Manual to LINMOD.
Appendix G. SAS/IML Power Program User's Guide.
Appendix H. Regression Model Selection Data.
References.
Index.
Applied Statistics: Analysis of Variance and Regression, 3rd Edition
Preface.
1. Data Screening.
1.1 Variables and Their Classification.
1.2 Describing the Data.
1.3 Departures from Assumptions.
1.4 Summary.
2. One-Way Analysis of Variance Design.
2.1 One-Way Analysis of Variance with Fixed Effects.
2.2 One-Way Analysis of Variance with Random Effects.
2.3 Designing an Observational Study or Experiment.
2.4 Checking if the Data Fit the One-Way ANOVA Model.
2.5 What to Do if the Data Do Not Fit the Model.
2.6 Presentation and Interpretation of Results.
2.7 Summary.
3. Estimation and Simultaneous Inference.
3.1 Estimation for Single Population Means.
3.2 Estimation for Linear Combinations of Population Means.
3.3 Simultaneous Statistical Inference.
3.4 Inference for Variance Components.
3.5 Presentation and Interpretation of Results.
3.6 Summary.
4. Hierarchical or Nested Design.
4.1 Example.
4.2 The Model.
4.3 Analysis of Variance Table and F Tests.
4.4 Estimation of Parameters.
4.5 Inferences with Unequal Sample Sizes.
4.6 Checking If the Data Fit the Model.
4.7 What to Do If the Data Don't Fit the Model.
4.8 Designing a Study.
4.9 Summary.
5. Two Crossed Factors: Fixed Effects and Equal Sample Sizes.
5.1 Example.
5.2 The Model.
5.3 Interpretation of Models and Interaction.
5.4 Analysis of Variance and F Tests.
5.5 Estimates of Parameters and Confidence Intervals.
5.6 Designing a Study.
5.7 Presentation and Interpretation of Results.
5.8 Summary.
6 Randomized Complete Block Design.
6.1 Example.
6.2 The Randomized Complete Block Design.
6.3 The Model.
6.4 Analysis of Variance Table and F Tests.
6.5 Estimation of Parameters and Confidence Intervals.
6.6 Checking If the Data Fit the Model.
6.7 What to Do if the Data Don't Fit the Model.
6.8 Designing a Randomized Complete Block Study.
6.9 Model Extensions.
6.10 Summary.
7. Two Crossed Factors: Fixed Effects and Unequal Sample Sizes.
7.1 Example.
7.2 The Model.
7.3 Analysis of Variance and F Tests.
7.4 Estimation of Parameters and Confidence Intervals.
7.5 Checking If the Data Fit the Two-Way Model.
7.6 What To Do If the Data Don't Fit the Model.
7.7 Summary.
8. Crossed Factors: Mixed Models.
8.1 Example.
8.2 The Mixed Model.
8.3 Estimation of Fixed Effects.
8.4 Analysis of Variance.
8.5 Estimation of Variance Components.
8.6 Hypothesis Testing.
8.7 Confidence Intervals for Means and Variance Components.
8.8 Comments on Available Software.
8.9 Extensions of the Mixed Model.
8.10 Summary.
9. Repeated Measures Designs.
9.1 Repeated Measures for a Single Population.
9.2 Repeated Measures with Several Populations.
9.3 Checking if the Data Fit the Repeated Measures Model.
9.4 What to Do if the Data Don't Fit the Model.
9.5 General Comments on Repeated Measures Analyses.
9.6 Summary.
10. Linear Regression: Fixed X Model.
10.1 Example.
10.2 Fitting a Straight Line.
10.3 The Fixed X Model.
10.4 Estimation of Model Parameters and Standard Errors.
10.5 Inferences for Model Parameters: Confidence Intervals.
10.6 Inference for Model Parameters: Hypothesis Testing.
10.7 Checking if the Data Fit the Regression Model.
10.8 What to Do if the Data Don't Fit the Model.
10.9 Practical Issues in Designing a Regression Study.
10.10 Comparison with One-Way ANOVA.
10.11 Summary.
11. Linear Regression: Random X Model and Correlation.
11.1 Example.
11.2 Summarizing the Relationship Between X and Y.
11.3 Inferences for the Regression of Y and X.
11.4 The Bivariate Normal Model.
11.5 Checking if the Data Fit the Random X Regression Model.
11.6 What to Do if the Data Don't Fit the Random X Model.
11.7 Summary.
12. Multiple Regression.
12.1 Example.
12.2 The Sample Regression Plane.
12.3 The Multiple Regression Model.
12.4 Parameters Standard Errors, and Confidence Intervals.
12.5 Hypothesis Testing.
12.6 Checking If the Data Fit the Multiple Regression Model.
12.7 What to Do If the Data Don't Fit the Model.
12.8 Summary.
13. Multiple and Partial Correlation.
13.1 Example.
13.2 The Sample Multiple Correlation Coefficient.
13.3 The Sample Partial Correlation Coefficient.
13.4 The Joint Distribution Model.
13.5 Inferences for the Multiple Correlation Coefficient.
13.6 Inferences for Partial Correlation Coefficients.
13.7 Checking If the Data Fit the Joint Normal Model.
13.8 What to Do If the Data Don't Fit the Model.
13.9 Summary.
14. Miscellaneous Topics in Regression.
14.1 Models with Dummy Variables.
14.2 Models with Interaction Terms.
14.3 Models with Polynomial Terms.
14.4 Variable Selection.
14.5 Summary.
15. Analysis of Covariance.
15.1 Example.
15.2 The ANCOVA Model.
15.3 Estimation of Model Parameters.
15.4 Hypothesis Tests.
15.5 Adjusted Means.
15.6 Checking If the Data Fit the ANCOVA Model.
15.7 What to Do if the Data Don't Fit the Model.
15.8 ANCOVA in Observational Studies.
15.9 What Makes a Good Covariate.
15.10 Measurement Error.
15.11 ANCOVA versus Other Methods of Adjustment.
15.12 Comments on Statistical Software.
15.13 Summary.
16. Summaries, Extensions, and Communication.
16.1 Summaries and Extensions of Models.
16.2 Communication of Statistics in the Context of Research Project.
Appendix A.
A.1 Expected Values and Parameters.
A.2 Linear Combinations of Variables and Their Parameters.
A.3 Balanced One-Way ANOVA, Expected Mean Squares.
A.4 Balanced One-Way ANOVA, Random Effects.
A.5 Balanced Nested Model.
A.6 Mixed Model.
A.7 Simple Linear Regression-Derivation of Least Squares Estimators.
A.8 Derivation of Variance Estimates from Simple Linear Regression.
Appendix B.
Index.