Description

Book Synopsis
Provides the tools needed to successfully perform adaptive tests across a broad range of datasets Adaptive Tests of Significance Using Permutations of Residuals with R and SAS illustrates the power of adaptive tests and showcases their ability to adjust the testing method to suit a particular set of data.

Trade Review

“Each chapter provides detailed information on R and SAS code, respectively. Moreover, each chapter closes with illustrating exercises (without solutions). This is ideal for researchers who wish to implement anadaptive test of significance for their specific problem.” (Biometrical Journal, 1 May 2013)



Table of Contents
Preface xv

1 Introduction 1

1.1 Why Use Adaptive Tests? 1

1.2 A Brief History of Adaptive Tests 2

1.3 The Adaptive Test of Hogg, Fisher, and Randies 5

1.4 Limitations of Rank-Based Tests 8

1.5 The Adaptive Weighted Least Squares Approach 9

1.6 Development of the Adaptive WLS Test 12

2 Smoothing Methods and Normalizing Transformations 15

2.1 Traditional Estimators of the Median and the Interquartile Range 15

2.2 Percentile Estimators that Use the Smooth Cumulative Distribution Function 16

2.3 Estimating the Bandwidth 21

2.4 Normalizing Transformations 23

2.5 The Weighting Algorithm 27

2.6 Computing the Bandwidth 30

2.7 Examples of Transformed Data 37

3 A Two-Sample Adaptive Test 43

3.1 A Two-Sample Model 44

3.2 Computing the Adaptive Weights 45

3.3 The Test Statistics for Adaptive Tests 47

3.4 Permutation Methods for Two-Sample Tests 50

3.5 An Example of a Two-Sample Test 54

3.6 R Code for the Two-Sample Test 56

3.7 Level of Significance of the Adaptive Test 61

3.8 Power of the Adaptive Test 63

3.9 Sample Size Estimation 65

3.10 A SAS Macro for the Adaptive Test 68

3.11 Modifications for One-Tailed Tests 70

3.12 Justification of the Weighting Method 70

3.13 Comments on the Adaptive Two-sample Test 71

4 Permutation Tests with Linear Models 75

4.1 Introduction 75

4.2 Notation 76

4.3 Permutations with Blocking 77

4.4 Linear Models in Matrix Form 77

4.5 Permutation Methods 78

4.6 Permutation Test Statistics 81

4.7 An Important Rule of Test Construction 82

4.8 A Permutation Algorithm 82

4.9 A Performance Comparison of the Permutation Methods 83

4.10 Discussion 84

5 An Adaptive Test for a Subset of Coefficients 87

5.1 The General Adaptive Testing Method 87

5.2 Simple Linear Regression 91

5.3 An Example of a Simple Linear Regression 93

5.4 Multiple Linear Regression 96

5.5 An Example of a Test in Multiple Regression 100

5.6 Conclusions 105

6 More Applications of Adaptive Tests 111

6.1 The Completely Randomized Design 111

6.2 Tests for Randomized Complete Block Designs 120

6.3 Adaptive Tests for Two-way Designs 127

6.4 Dealing with Unequal Variances 134

6.5 Extensions to More Complex Designs 140

7 The Adaptive Analysis of Paired Data 149

7.1 Introduction 149

7.2 The Adaptive Test of Miao and Gastwirth 151

7.3 An Adaptive Weighted Least Squares Test 153

7.4 An Example Using Paired Data 160

7.5 Simulation Study 161

7.6 Sample Size Estimation 163

7.7 Discussion of Tests for Paired Data 165

8 Multicenter and Cross-Over Trials 169

8.1 Tests in Multicenter Clinical Trials 170

8.2 Adaptive Analysis of Cross-over Trials 176

9 Adaptive Multivariate Tests 191

9.1 The Traditional Likelihood Ratio Test 191

9.2 An Adaptive Multivariate Test 192

9.3 An Example with Two Dependent Variables 196

9.4 Performance of the Adaptive Test 199

9.5 Conclusions for Multivariate Tests 203

10 Analysis of Repeated Measures Data 207

10.1 Introduction 207

10.2 The Multivariate LR Test 209

10.3 The Adaptive Test 209

10.4 The Mixed Model Test 210

10.5 Two-Sample Tests 211

10.6 Two-Sample Tests for Parallelism 212

10.7 Two-Sample Tests for Group Effect 219

10.8 An Example of Repeated Measures Data 223

10.9 Dealing with Missing Data 227

10.10 Conclusions and Recommendations 229

11 Rank-Based Tests of Significance 235

11.1 The Quest for Power 235

11.2 Two-Sample Rank Tests 236

11.3 The HFR Test 242

11.4 Significance Level of Adaptive Tests 243

11.5 Biining's Adaptive Test for Location 244

11.6 An Adaptive Test for Location and Scale 245

11.7 Other Adaptive Rank Tests 247

11.8 Maximum Test 248

11.9 Discussion 249

12 Adaptive Confidence Intervals and Estimates 253

12.1 The Relationship Between Tests and Confidence Intervals 253

12.2 The Iterative Procedure of Garthwaite 254

12.3 Confidence Interval for a Difference 259

12.4 A 95% Confidence Interval for Slope 263

12.5 A General Formula for Confidence Limits 264

12.6 Computing a Confidence Interval Using R 266

12.7 Computing a 95% Confidence Interval Using SAS 268

12.8 Adaptive Estimation 268

12.9 Adaptive Estimation of the Difference Between Two Population Means 271

12.10 Adaptive Estimation of a Slope in a Multiple Regression Model 272

12.11 Computing an Adaptive Estimate Using R 274

12.12 Computing an Adaptive Estimate Using SAS 278

12.13 Discussion 278

Exercises 279

Appendix A: R Code for Univariate Adaptive Tests 283

Appendix B: SAS Macro for Adaptive Tests 287

Appendix C: SAS Macro for Multiple Comparisons Procedures 299

Appendix D: R Code for Adaptive Tests with Blocking Factors 303

Appendix E: R Code for Adaptive Test with Paired Data 305

Appendix F: SAS Macro for Adaptive Test with Paired Data 309

Appendix G: R Code for Multivariate Adaptive Tests 313

Appendix H: R Code for Confidence Intervals and Estimates 317

Appendix I: SAS Macro for Confidence Intervals 321

Appendix J: SAS Macro for Estimates 329

References 333

Index 341

Adaptive Tests of Significance Using Permutations

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    A Hardback by Thomas W. O'Gorman

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      Publisher: John Wiley & Sons Inc
      Publication Date: 27/03/2012
      ISBN13: 9780470922255, 978-0470922255
      ISBN10: 0470922257
      Also in:
      Mathematics

      Description

      Book Synopsis
      Provides the tools needed to successfully perform adaptive tests across a broad range of datasets Adaptive Tests of Significance Using Permutations of Residuals with R and SAS illustrates the power of adaptive tests and showcases their ability to adjust the testing method to suit a particular set of data.

      Trade Review

      “Each chapter provides detailed information on R and SAS code, respectively. Moreover, each chapter closes with illustrating exercises (without solutions). This is ideal for researchers who wish to implement anadaptive test of significance for their specific problem.” (Biometrical Journal, 1 May 2013)



      Table of Contents
      Preface xv

      1 Introduction 1

      1.1 Why Use Adaptive Tests? 1

      1.2 A Brief History of Adaptive Tests 2

      1.3 The Adaptive Test of Hogg, Fisher, and Randies 5

      1.4 Limitations of Rank-Based Tests 8

      1.5 The Adaptive Weighted Least Squares Approach 9

      1.6 Development of the Adaptive WLS Test 12

      2 Smoothing Methods and Normalizing Transformations 15

      2.1 Traditional Estimators of the Median and the Interquartile Range 15

      2.2 Percentile Estimators that Use the Smooth Cumulative Distribution Function 16

      2.3 Estimating the Bandwidth 21

      2.4 Normalizing Transformations 23

      2.5 The Weighting Algorithm 27

      2.6 Computing the Bandwidth 30

      2.7 Examples of Transformed Data 37

      3 A Two-Sample Adaptive Test 43

      3.1 A Two-Sample Model 44

      3.2 Computing the Adaptive Weights 45

      3.3 The Test Statistics for Adaptive Tests 47

      3.4 Permutation Methods for Two-Sample Tests 50

      3.5 An Example of a Two-Sample Test 54

      3.6 R Code for the Two-Sample Test 56

      3.7 Level of Significance of the Adaptive Test 61

      3.8 Power of the Adaptive Test 63

      3.9 Sample Size Estimation 65

      3.10 A SAS Macro for the Adaptive Test 68

      3.11 Modifications for One-Tailed Tests 70

      3.12 Justification of the Weighting Method 70

      3.13 Comments on the Adaptive Two-sample Test 71

      4 Permutation Tests with Linear Models 75

      4.1 Introduction 75

      4.2 Notation 76

      4.3 Permutations with Blocking 77

      4.4 Linear Models in Matrix Form 77

      4.5 Permutation Methods 78

      4.6 Permutation Test Statistics 81

      4.7 An Important Rule of Test Construction 82

      4.8 A Permutation Algorithm 82

      4.9 A Performance Comparison of the Permutation Methods 83

      4.10 Discussion 84

      5 An Adaptive Test for a Subset of Coefficients 87

      5.1 The General Adaptive Testing Method 87

      5.2 Simple Linear Regression 91

      5.3 An Example of a Simple Linear Regression 93

      5.4 Multiple Linear Regression 96

      5.5 An Example of a Test in Multiple Regression 100

      5.6 Conclusions 105

      6 More Applications of Adaptive Tests 111

      6.1 The Completely Randomized Design 111

      6.2 Tests for Randomized Complete Block Designs 120

      6.3 Adaptive Tests for Two-way Designs 127

      6.4 Dealing with Unequal Variances 134

      6.5 Extensions to More Complex Designs 140

      7 The Adaptive Analysis of Paired Data 149

      7.1 Introduction 149

      7.2 The Adaptive Test of Miao and Gastwirth 151

      7.3 An Adaptive Weighted Least Squares Test 153

      7.4 An Example Using Paired Data 160

      7.5 Simulation Study 161

      7.6 Sample Size Estimation 163

      7.7 Discussion of Tests for Paired Data 165

      8 Multicenter and Cross-Over Trials 169

      8.1 Tests in Multicenter Clinical Trials 170

      8.2 Adaptive Analysis of Cross-over Trials 176

      9 Adaptive Multivariate Tests 191

      9.1 The Traditional Likelihood Ratio Test 191

      9.2 An Adaptive Multivariate Test 192

      9.3 An Example with Two Dependent Variables 196

      9.4 Performance of the Adaptive Test 199

      9.5 Conclusions for Multivariate Tests 203

      10 Analysis of Repeated Measures Data 207

      10.1 Introduction 207

      10.2 The Multivariate LR Test 209

      10.3 The Adaptive Test 209

      10.4 The Mixed Model Test 210

      10.5 Two-Sample Tests 211

      10.6 Two-Sample Tests for Parallelism 212

      10.7 Two-Sample Tests for Group Effect 219

      10.8 An Example of Repeated Measures Data 223

      10.9 Dealing with Missing Data 227

      10.10 Conclusions and Recommendations 229

      11 Rank-Based Tests of Significance 235

      11.1 The Quest for Power 235

      11.2 Two-Sample Rank Tests 236

      11.3 The HFR Test 242

      11.4 Significance Level of Adaptive Tests 243

      11.5 Biining's Adaptive Test for Location 244

      11.6 An Adaptive Test for Location and Scale 245

      11.7 Other Adaptive Rank Tests 247

      11.8 Maximum Test 248

      11.9 Discussion 249

      12 Adaptive Confidence Intervals and Estimates 253

      12.1 The Relationship Between Tests and Confidence Intervals 253

      12.2 The Iterative Procedure of Garthwaite 254

      12.3 Confidence Interval for a Difference 259

      12.4 A 95% Confidence Interval for Slope 263

      12.5 A General Formula for Confidence Limits 264

      12.6 Computing a Confidence Interval Using R 266

      12.7 Computing a 95% Confidence Interval Using SAS 268

      12.8 Adaptive Estimation 268

      12.9 Adaptive Estimation of the Difference Between Two Population Means 271

      12.10 Adaptive Estimation of a Slope in a Multiple Regression Model 272

      12.11 Computing an Adaptive Estimate Using R 274

      12.12 Computing an Adaptive Estimate Using SAS 278

      12.13 Discussion 278

      Exercises 279

      Appendix A: R Code for Univariate Adaptive Tests 283

      Appendix B: SAS Macro for Adaptive Tests 287

      Appendix C: SAS Macro for Multiple Comparisons Procedures 299

      Appendix D: R Code for Adaptive Tests with Blocking Factors 303

      Appendix E: R Code for Adaptive Test with Paired Data 305

      Appendix F: SAS Macro for Adaptive Test with Paired Data 309

      Appendix G: R Code for Multivariate Adaptive Tests 313

      Appendix H: R Code for Confidence Intervals and Estimates 317

      Appendix I: SAS Macro for Confidence Intervals 321

      Appendix J: SAS Macro for Estimates 329

      References 333

      Index 341

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