Statistical Planning and Inference

Statistical Planning and Inference -15% portes grátis

Statistical Planning and Inference

Concepts and Applications

Ghosh, Subir

John Wiley & Sons Inc

11/2025

240

Dura

Inglês

9781119962786

15 a 20 dias

Descrição não disponível.
Preface xi

1 Foundation of Experiments 1

1.1 Uncertainties in Evidences 1

1.2 Examples 2

1.2.1 The Louis Pasteur Anthrax Vaccination Experiment 2

1.2.2 The Lanarkshire Milk Experiment: Milk Tests in Lanarkshire Schools 2

1.3 Replication, Randomization, Blocking, and Blinding 4

1.3.1 Replication 4

1.3.2 Randomization 4

1.3.3 Blocking 4

1.3.4 Blinding 4

1.4 Figuring It Out! 4

Questions and Answers 5

Bibliography 6

2 Completely Randomized Design 7

2.1 An Example 7

2.2 Analyses Using R and SAS 9

2.3 Figuring It Out! 12

Bibliography 16

3 Randomized Complete Block Design 17

3.1 Fixed Effects Model 18

3.2 Binomial Model for Signs 20

3.3 Randomization Model 20

3.4 Mixed Effects Model 25

3.5 General Mixed Effects Model 27

3.6 The REML Variance Components Estimates 28

3.7 BLUEs and BLUPs 31

3.7.1 The Conditional Model 32

3.7.2 The Unconditional Model 32

3.7.3 Computation-The Conditional Model 33

3.7.4 Computation-The Unconditional Model 34

3.8 Figuring It Out! 39

Bibliography 40

4 Randomized Incomplete Block Design 41

4.1 Model M1: Fixed-Effects Model 41

4.2 Model M2: Mixed-Effects Model 43

4.3 Research Questions 44

4.4 Figuring It Out! 45

4.5 Definitions 46

Exercises 46

Bibliography 51

5 Error Rates 53

5.1 Definitions of Error Rates 53

5.2 Single-Stage Methods 55

5.3 A Multistage Method 56

5.3.1 Benjamini and Hochberg Method 57

5.4 Figuring It Out 58

Questions 59

Bibliography 62

6 Nutrition Experiment 63

6.1 Figuring It Out! 63

Bibliography 75

7 The Pearson Dependence 77

7.1 Bivariate Normal Distribution 77

7.2 Estimation of Unknown Parameters 79

7.2.1 The Unconditional Model 79

7.2.2 The Conditional Model 81

7.2.3 Test of Significance 83

7.3 A Bayesian Estimation 84

7.4 Exercises 86

Bibliography 87

8 The Multivariate Dependence 89

8.1 The Multivariate Normal Distribution 90

8.2 Inference 91

8.3 Partial Dependence 96

8.4 Exercises 96

Bibliography 98

9 The Conditional Mean Dependence 99

9.1 LS Estimation 100

9.2 Ridge Estimation 101

9.2.1 A Bayesian Estimation 103

9.3 Dependence of Ridge Estimator on the Tuning Parameter 103

9.4 LASSO Estimation 104

9.5 Dependence of LASSO Estimators on the Tuning Parameter 105

Bibliography 116

10 More Parameters Than Observations 119

10.1 Learning by Doing-Exercises 122

Exercises 123

Bibliography 125

11 Eigenvalues, Eigenvectors, and Applications 127

11.1 Eigenvalues and Eigenvectors 127

11.2 Second-Order Response Surface 129

Exercises 132

Bibliography 133

12 Covariance Estimation 135

12.1 Model 1 135

12.1.1 Characterization of the Covariance Matrix and Its Estimators 135

12.1.2 Likelihood Function 136

12.1.3 Properties 137

12.2 Model 2 137

12.2.1 Characterization of the Covariance Matrix and Its Estimators 138

12.3 Model 3 138

12.4 Model 4 139

12.5 Model 5 140

12.6 Exercises 141

Bibliography 142

13 Discriminant Analysis 145

13.1 Learning from the Univariate Data-Two Normal Populations with Equal Variances 145

13.1.1 Discriminant Analysis for the Univariate Data 147

13.1.2 Example-Univariate Discriminant Analysis 148

13.2 Learning from the Univariate Data-Two Normal Populations with Unequal Variances 151

13.2.1 Classification of 25 Versicolor Iris Flowers 153

13.2.2 Classification of 25 Setosa Iris Flowers 154

13.2.3 Test of Homogeneity of Variances 154

13.3 Learning from the Multivariate Data 155

13.3.1 Classification of Versicolor and Setosa 156

13.3.2 Classification of Versicolor and Virginica 158

13.4 Logistic Regression 159

13.5 Exercises 160

Bibliography 162

14 Optimizing the Variance-Bias Trade-Off 163

14.1 Variance-Bias Trade-Off 163

14.1.1 Example 1 164

14.1.2 Example 2 165

14.1.3 Example 3 166

14.2 Information in Data 167

14.3 Information and Design in Presence of a Covariate 169

14.3.1 Information 169

14.3.2 Optimum Design for a Covariate 170

14.4 Information and Design in Presence of Multiple Covariates 171

14.4.1 Information 171

14.4.2 Exponential Model 175

14.4.3 Exponential Regression Model with Multiple Covariates 176

14.4.4 Poisson Log-Linear Model 177

14.4.5 Non-parametric Regression Model 180

14.5 Exercises 183

Bibliography 187

15 Specification, Discrimination, Robustness, and Sensitivity 189

15.1 The Global and Local Optimal Models 189

15.2 The T-Optimal Design 190

15.3 Convex and Concave Functions 192

15.4 The Kullback-Leibler (KL) Divergence 194

15.5 The KL Design Optimality 197

15.6 The Differential Entropy 198

15.7 Lindley Information Measure 200

15.8 Joint Entropy, Conditional Entropy, and Mutual Information 202

15.9 Maximum Entropy Sampling 204

15.10 Search Linear Models and Search Designs 207

15.10.1 Factorial Experiments 209

15.10.2 Search Probability Matrix 210

15.11 Robustness Against Unavailable Data 210

15.12 Influential Sets of Observations 212

15.13 Exercises 213

Bibliography 214

Data Index 217

Subject Index 219
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methods; inference; planning; market practitioners; block designs; life sciences; noise-effect reduction; explores; addresses; developments; examples; concepts; solutions; guidance; presents; designs; experiments; problems