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Produktdetails
- Verlag: Wiley
- Seitenzahl: 272
- Erscheinungstermin: 21. Juli 2020
- Englisch
- Abmessung: 249mm x 203mm x 13mm
- Gewicht: 635g
- ISBN-13: 9781119746010
- ISBN-10: 1119746019
- Artikelnr.: 59985767
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
Student Solution Available in Interactive e-Text
Preface iii
About the Authors v
1 Experimental Design: Principles and Practices and Statistics Review 1
1.1 The Strategy of Experimentation 1
1.2 Basic Principles 8
1.3 Practical Guidelines for Designing an Experiment 10
1.3.1 Recognition of and Statement of the Problem 10
1.3.2 Selection of the Response Variable 11
1.3.3 Choice of Factors, Levels, and Ranges 11
1.3.4 Experimental Design Generation 13
1.3.5 Performing the Experiment 14
1.3.6 Statistical Analysis of the Data 14
1.3.7 Conclusions and Recommendations 15
1.4 A Brief History of Designed Experiments 15
1.5 A Review: Using Statistical Techniques in Experimentation 17
1.6 Review of Some Basic Statistical Concepts and Methods 18
1.6.1 Data Description 18
1.6.2 Random Samples, Statistics and Sampling Distributions 23
1.6.3 Statistical Intervals and Tests of Hypotheses 28
2 Simple Comparative Experiments 42
2.1 Introduction 42
2.2 Statistical Methods for Comparing Two Population Means 42
2.2.1 Parameter Estimation and Confidence Intervals 42
2.2.2 Statistical Hypothesis Testing on the Difference in Means 47
2.3 Comparison of Two Means, Variances Unknown 51
2.3.1 Confidence Intervals on the Difference in Means of Two Normal
Distributions, Variances Unknown 52
2.3.2 Hypothesis Testing on the Difference in Means of Two Normal
Distributions with Unknown Variances 54
2.3.3 Comparison of Means of Two Normal Distributions with Variances
Unknown but Assumed Equal 56
2.3.4 Power and Sample Size Calculations 57
2.3.5 The Normality Assumption 57
3 Experiments With a Single Categorical Factor: Design Issues and the
Analysis of Variance 59
3.1 Motivating Example 59
3.2 Statistical Model for the Data 61
3.3 Design Considerations 62
3.4 Statistical Analysis of the Data 62
3.4.1 Partitioning the Variance of the Response 63
3.4.2 The ANOVA 64
3.4.3 Post-ANOVA Comparison of Treatment Means 65
3.4.4 Comparing Treatment Means with a Control 68
3.4.5 The Effects Model 70
3.5 Model Adequacy Checking 71
3.5.1 Checking the Normality Assumption 71
3.5.2 Checking for Nonconstant Variance 73
3.6 Power and Sample Size 75
4 Experiments With a Single Continuous Factor: Design Issues and the
Regression Analysis 77
4.1 Motivating Example 77
4.2 Statistical Models for the Data 77
4.3 Fitting a Statistical Model Using the Data 79
4.4 Design Considerations 82
4.5 Design Comparison 83
5 Two-Factor Factorial Experiments 87
5.1 Basic Concepts 87
5.2 Two Categorical Factors 89
5.3 The Analysis of Variance for a Two-factor Factorial 92
5.4 One Categorical Factor and One Continuous Factor 98
5.5 Two Continuous Factors 100
5.6 Design and Analysis When Some Factor Level Combinations Are Infeasible
105
6 Blocking 109
6.1 The Randomized Complete Block Design 109
6.2 Statistical Analysis of the RCBD 110
6.3 Blocking and Optimal Designs 113
7 The 2k Factorial Design 118
7.1 Introduction 118
7.2 The 22 Factorial Design 118
7.2.1 How Much Replication is Necessary? 119
7.3 The 23 Factorial Design 123
7.3.1 Replication of the 23 Design 128
7.4 A Single Replicate of the 2k Design 129
7.5 2k Designs are Optimal Designs 133
7.6 More About Replication of 2k Designs 135
7.6.1 Adding Center Runs to a 2k Design 137
7.7 Blocking in 2k Designs 138
8 Screening Experiments 140
8.1 Introduction 140
8.2 Regular Fractional Factorial Designs for Factor Screening 141
8.2.1 A General Method for Finding the Alias Relationships in Fractional
Factorial Designs 144
8.2.2 Dealiasing Effects 148
8.3 Nonregular Orthogonal Designs 150
8.4 Nonorthogonal Screening Designs 153
8.5 Definitive Screening Designs 156
8.5.1 Statistical Properties of a DSD 158
8.5.2 Constructing DSDs Using Conference Matrices 158
8.5.3 Constructing DSDs with Additional Two-level Categorical Factors 159
8.5.4 Constructing Orthogonally Blocked DSDs 159
8.5.5 Situations When You Should Use a Screening Design Other Than a DSD
159
8.5.6 Recommendations 160
8.6 Screening Summary 160
9 Experiments With Random Blocks 163
9.1 Introduction 163
9.2 Motivating Example: Design and Analysis 164
9.3 Matrix Formulation of the Model for an Experiment with Random Blocks
165
9.4 Design Considerations 166
9.5 A Screening Design with a Random Blocking Factor 166
9.6 Recommendations for Use of Designs with Random Blocks 170
10 Split-Plot Experiments 172
10.1 Introduction 172
10.2 Motivating Example: Design and Analysis 173
10.3 Matrix Formulation of the Model for a Split-plot Experiment 174
10.4 Design Considerations 176
10.5 Split-plot Screening Design 176
10.6 Recommendations for Use of Split-plot Designs 177
11 Response Surface Methods 180
11.1 Introduction 180
11.2 Optimization Techniques in RSM 182
11.3 Response Surface Designs 196
11.3.1 Classical Response Surface Designs 196
11.3.2 Definitive Screening Designs 197
11.3.3 Optimal Designs in RSM 201
12 Design For Models That are Nonlinear in the Parameters 203
12.1 Introduction 203
12.2 Design and Analysis of Exponential Decay 204
12.3 Analysis and Locally Optimal Design of the Michaelis-Menten Model 206
12.4 Yield Optimization as a Function of Reaction Temperature and Time 207
12.5 Mathematical Details for Constructing Optimal Designs for Nonlinear
Models 208
12.6 Optimal Design for Situations Where the Response is Binary 210
12.7 Multifactor Binomial Model Experiments 212
12.8 Mathematical Details for Constructing Optimal Designs for Generalized
Linear Models 213
Problems P-1
A JMP Scripting Commands For Computing Distribution Probabilities and
Quantiles A-1
References R-1
Index I-1
Preface iii
About the Authors v
1 Experimental Design: Principles and Practices and Statistics Review 1
1.1 The Strategy of Experimentation 1
1.2 Basic Principles 8
1.3 Practical Guidelines for Designing an Experiment 10
1.3.1 Recognition of and Statement of the Problem 10
1.3.2 Selection of the Response Variable 11
1.3.3 Choice of Factors, Levels, and Ranges 11
1.3.4 Experimental Design Generation 13
1.3.5 Performing the Experiment 14
1.3.6 Statistical Analysis of the Data 14
1.3.7 Conclusions and Recommendations 15
1.4 A Brief History of Designed Experiments 15
1.5 A Review: Using Statistical Techniques in Experimentation 17
1.6 Review of Some Basic Statistical Concepts and Methods 18
1.6.1 Data Description 18
1.6.2 Random Samples, Statistics and Sampling Distributions 23
1.6.3 Statistical Intervals and Tests of Hypotheses 28
2 Simple Comparative Experiments 42
2.1 Introduction 42
2.2 Statistical Methods for Comparing Two Population Means 42
2.2.1 Parameter Estimation and Confidence Intervals 42
2.2.2 Statistical Hypothesis Testing on the Difference in Means 47
2.3 Comparison of Two Means, Variances Unknown 51
2.3.1 Confidence Intervals on the Difference in Means of Two Normal
Distributions, Variances Unknown 52
2.3.2 Hypothesis Testing on the Difference in Means of Two Normal
Distributions with Unknown Variances 54
2.3.3 Comparison of Means of Two Normal Distributions with Variances
Unknown but Assumed Equal 56
2.3.4 Power and Sample Size Calculations 57
2.3.5 The Normality Assumption 57
3 Experiments With a Single Categorical Factor: Design Issues and the
Analysis of Variance 59
3.1 Motivating Example 59
3.2 Statistical Model for the Data 61
3.3 Design Considerations 62
3.4 Statistical Analysis of the Data 62
3.4.1 Partitioning the Variance of the Response 63
3.4.2 The ANOVA 64
3.4.3 Post-ANOVA Comparison of Treatment Means 65
3.4.4 Comparing Treatment Means with a Control 68
3.4.5 The Effects Model 70
3.5 Model Adequacy Checking 71
3.5.1 Checking the Normality Assumption 71
3.5.2 Checking for Nonconstant Variance 73
3.6 Power and Sample Size 75
4 Experiments With a Single Continuous Factor: Design Issues and the
Regression Analysis 77
4.1 Motivating Example 77
4.2 Statistical Models for the Data 77
4.3 Fitting a Statistical Model Using the Data 79
4.4 Design Considerations 82
4.5 Design Comparison 83
5 Two-Factor Factorial Experiments 87
5.1 Basic Concepts 87
5.2 Two Categorical Factors 89
5.3 The Analysis of Variance for a Two-factor Factorial 92
5.4 One Categorical Factor and One Continuous Factor 98
5.5 Two Continuous Factors 100
5.6 Design and Analysis When Some Factor Level Combinations Are Infeasible
105
6 Blocking 109
6.1 The Randomized Complete Block Design 109
6.2 Statistical Analysis of the RCBD 110
6.3 Blocking and Optimal Designs 113
7 The 2k Factorial Design 118
7.1 Introduction 118
7.2 The 22 Factorial Design 118
7.2.1 How Much Replication is Necessary? 119
7.3 The 23 Factorial Design 123
7.3.1 Replication of the 23 Design 128
7.4 A Single Replicate of the 2k Design 129
7.5 2k Designs are Optimal Designs 133
7.6 More About Replication of 2k Designs 135
7.6.1 Adding Center Runs to a 2k Design 137
7.7 Blocking in 2k Designs 138
8 Screening Experiments 140
8.1 Introduction 140
8.2 Regular Fractional Factorial Designs for Factor Screening 141
8.2.1 A General Method for Finding the Alias Relationships in Fractional
Factorial Designs 144
8.2.2 Dealiasing Effects 148
8.3 Nonregular Orthogonal Designs 150
8.4 Nonorthogonal Screening Designs 153
8.5 Definitive Screening Designs 156
8.5.1 Statistical Properties of a DSD 158
8.5.2 Constructing DSDs Using Conference Matrices 158
8.5.3 Constructing DSDs with Additional Two-level Categorical Factors 159
8.5.4 Constructing Orthogonally Blocked DSDs 159
8.5.5 Situations When You Should Use a Screening Design Other Than a DSD
159
8.5.6 Recommendations 160
8.6 Screening Summary 160
9 Experiments With Random Blocks 163
9.1 Introduction 163
9.2 Motivating Example: Design and Analysis 164
9.3 Matrix Formulation of the Model for an Experiment with Random Blocks
165
9.4 Design Considerations 166
9.5 A Screening Design with a Random Blocking Factor 166
9.6 Recommendations for Use of Designs with Random Blocks 170
10 Split-Plot Experiments 172
10.1 Introduction 172
10.2 Motivating Example: Design and Analysis 173
10.3 Matrix Formulation of the Model for a Split-plot Experiment 174
10.4 Design Considerations 176
10.5 Split-plot Screening Design 176
10.6 Recommendations for Use of Split-plot Designs 177
11 Response Surface Methods 180
11.1 Introduction 180
11.2 Optimization Techniques in RSM 182
11.3 Response Surface Designs 196
11.3.1 Classical Response Surface Designs 196
11.3.2 Definitive Screening Designs 197
11.3.3 Optimal Designs in RSM 201
12 Design For Models That are Nonlinear in the Parameters 203
12.1 Introduction 203
12.2 Design and Analysis of Exponential Decay 204
12.3 Analysis and Locally Optimal Design of the Michaelis-Menten Model 206
12.4 Yield Optimization as a Function of Reaction Temperature and Time 207
12.5 Mathematical Details for Constructing Optimal Designs for Nonlinear
Models 208
12.6 Optimal Design for Situations Where the Response is Binary 210
12.7 Multifactor Binomial Model Experiments 212
12.8 Mathematical Details for Constructing Optimal Designs for Generalized
Linear Models 213
Problems P-1
A JMP Scripting Commands For Computing Distribution Probabilities and
Quantiles A-1
References R-1
Index I-1
Student Solution Available in Interactive e-Text
Preface iii
About the Authors v
1 Experimental Design: Principles and Practices and Statistics Review 1
1.1 The Strategy of Experimentation 1
1.2 Basic Principles 8
1.3 Practical Guidelines for Designing an Experiment 10
1.3.1 Recognition of and Statement of the Problem 10
1.3.2 Selection of the Response Variable 11
1.3.3 Choice of Factors, Levels, and Ranges 11
1.3.4 Experimental Design Generation 13
1.3.5 Performing the Experiment 14
1.3.6 Statistical Analysis of the Data 14
1.3.7 Conclusions and Recommendations 15
1.4 A Brief History of Designed Experiments 15
1.5 A Review: Using Statistical Techniques in Experimentation 17
1.6 Review of Some Basic Statistical Concepts and Methods 18
1.6.1 Data Description 18
1.6.2 Random Samples, Statistics and Sampling Distributions 23
1.6.3 Statistical Intervals and Tests of Hypotheses 28
2 Simple Comparative Experiments 42
2.1 Introduction 42
2.2 Statistical Methods for Comparing Two Population Means 42
2.2.1 Parameter Estimation and Confidence Intervals 42
2.2.2 Statistical Hypothesis Testing on the Difference in Means 47
2.3 Comparison of Two Means, Variances Unknown 51
2.3.1 Confidence Intervals on the Difference in Means of Two Normal
Distributions, Variances Unknown 52
2.3.2 Hypothesis Testing on the Difference in Means of Two Normal
Distributions with Unknown Variances 54
2.3.3 Comparison of Means of Two Normal Distributions with Variances
Unknown but Assumed Equal 56
2.3.4 Power and Sample Size Calculations 57
2.3.5 The Normality Assumption 57
3 Experiments With a Single Categorical Factor: Design Issues and the
Analysis of Variance 59
3.1 Motivating Example 59
3.2 Statistical Model for the Data 61
3.3 Design Considerations 62
3.4 Statistical Analysis of the Data 62
3.4.1 Partitioning the Variance of the Response 63
3.4.2 The ANOVA 64
3.4.3 Post-ANOVA Comparison of Treatment Means 65
3.4.4 Comparing Treatment Means with a Control 68
3.4.5 The Effects Model 70
3.5 Model Adequacy Checking 71
3.5.1 Checking the Normality Assumption 71
3.5.2 Checking for Nonconstant Variance 73
3.6 Power and Sample Size 75
4 Experiments With a Single Continuous Factor: Design Issues and the
Regression Analysis 77
4.1 Motivating Example 77
4.2 Statistical Models for the Data 77
4.3 Fitting a Statistical Model Using the Data 79
4.4 Design Considerations 82
4.5 Design Comparison 83
5 Two-Factor Factorial Experiments 87
5.1 Basic Concepts 87
5.2 Two Categorical Factors 89
5.3 The Analysis of Variance for a Two-factor Factorial 92
5.4 One Categorical Factor and One Continuous Factor 98
5.5 Two Continuous Factors 100
5.6 Design and Analysis When Some Factor Level Combinations Are Infeasible
105
6 Blocking 109
6.1 The Randomized Complete Block Design 109
6.2 Statistical Analysis of the RCBD 110
6.3 Blocking and Optimal Designs 113
7 The 2k Factorial Design 118
7.1 Introduction 118
7.2 The 22 Factorial Design 118
7.2.1 How Much Replication is Necessary? 119
7.3 The 23 Factorial Design 123
7.3.1 Replication of the 23 Design 128
7.4 A Single Replicate of the 2k Design 129
7.5 2k Designs are Optimal Designs 133
7.6 More About Replication of 2k Designs 135
7.6.1 Adding Center Runs to a 2k Design 137
7.7 Blocking in 2k Designs 138
8 Screening Experiments 140
8.1 Introduction 140
8.2 Regular Fractional Factorial Designs for Factor Screening 141
8.2.1 A General Method for Finding the Alias Relationships in Fractional
Factorial Designs 144
8.2.2 Dealiasing Effects 148
8.3 Nonregular Orthogonal Designs 150
8.4 Nonorthogonal Screening Designs 153
8.5 Definitive Screening Designs 156
8.5.1 Statistical Properties of a DSD 158
8.5.2 Constructing DSDs Using Conference Matrices 158
8.5.3 Constructing DSDs with Additional Two-level Categorical Factors 159
8.5.4 Constructing Orthogonally Blocked DSDs 159
8.5.5 Situations When You Should Use a Screening Design Other Than a DSD
159
8.5.6 Recommendations 160
8.6 Screening Summary 160
9 Experiments With Random Blocks 163
9.1 Introduction 163
9.2 Motivating Example: Design and Analysis 164
9.3 Matrix Formulation of the Model for an Experiment with Random Blocks
165
9.4 Design Considerations 166
9.5 A Screening Design with a Random Blocking Factor 166
9.6 Recommendations for Use of Designs with Random Blocks 170
10 Split-Plot Experiments 172
10.1 Introduction 172
10.2 Motivating Example: Design and Analysis 173
10.3 Matrix Formulation of the Model for a Split-plot Experiment 174
10.4 Design Considerations 176
10.5 Split-plot Screening Design 176
10.6 Recommendations for Use of Split-plot Designs 177
11 Response Surface Methods 180
11.1 Introduction 180
11.2 Optimization Techniques in RSM 182
11.3 Response Surface Designs 196
11.3.1 Classical Response Surface Designs 196
11.3.2 Definitive Screening Designs 197
11.3.3 Optimal Designs in RSM 201
12 Design For Models That are Nonlinear in the Parameters 203
12.1 Introduction 203
12.2 Design and Analysis of Exponential Decay 204
12.3 Analysis and Locally Optimal Design of the Michaelis-Menten Model 206
12.4 Yield Optimization as a Function of Reaction Temperature and Time 207
12.5 Mathematical Details for Constructing Optimal Designs for Nonlinear
Models 208
12.6 Optimal Design for Situations Where the Response is Binary 210
12.7 Multifactor Binomial Model Experiments 212
12.8 Mathematical Details for Constructing Optimal Designs for Generalized
Linear Models 213
Problems P-1
A JMP Scripting Commands For Computing Distribution Probabilities and
Quantiles A-1
References R-1
Index I-1
Preface iii
About the Authors v
1 Experimental Design: Principles and Practices and Statistics Review 1
1.1 The Strategy of Experimentation 1
1.2 Basic Principles 8
1.3 Practical Guidelines for Designing an Experiment 10
1.3.1 Recognition of and Statement of the Problem 10
1.3.2 Selection of the Response Variable 11
1.3.3 Choice of Factors, Levels, and Ranges 11
1.3.4 Experimental Design Generation 13
1.3.5 Performing the Experiment 14
1.3.6 Statistical Analysis of the Data 14
1.3.7 Conclusions and Recommendations 15
1.4 A Brief History of Designed Experiments 15
1.5 A Review: Using Statistical Techniques in Experimentation 17
1.6 Review of Some Basic Statistical Concepts and Methods 18
1.6.1 Data Description 18
1.6.2 Random Samples, Statistics and Sampling Distributions 23
1.6.3 Statistical Intervals and Tests of Hypotheses 28
2 Simple Comparative Experiments 42
2.1 Introduction 42
2.2 Statistical Methods for Comparing Two Population Means 42
2.2.1 Parameter Estimation and Confidence Intervals 42
2.2.2 Statistical Hypothesis Testing on the Difference in Means 47
2.3 Comparison of Two Means, Variances Unknown 51
2.3.1 Confidence Intervals on the Difference in Means of Two Normal
Distributions, Variances Unknown 52
2.3.2 Hypothesis Testing on the Difference in Means of Two Normal
Distributions with Unknown Variances 54
2.3.3 Comparison of Means of Two Normal Distributions with Variances
Unknown but Assumed Equal 56
2.3.4 Power and Sample Size Calculations 57
2.3.5 The Normality Assumption 57
3 Experiments With a Single Categorical Factor: Design Issues and the
Analysis of Variance 59
3.1 Motivating Example 59
3.2 Statistical Model for the Data 61
3.3 Design Considerations 62
3.4 Statistical Analysis of the Data 62
3.4.1 Partitioning the Variance of the Response 63
3.4.2 The ANOVA 64
3.4.3 Post-ANOVA Comparison of Treatment Means 65
3.4.4 Comparing Treatment Means with a Control 68
3.4.5 The Effects Model 70
3.5 Model Adequacy Checking 71
3.5.1 Checking the Normality Assumption 71
3.5.2 Checking for Nonconstant Variance 73
3.6 Power and Sample Size 75
4 Experiments With a Single Continuous Factor: Design Issues and the
Regression Analysis 77
4.1 Motivating Example 77
4.2 Statistical Models for the Data 77
4.3 Fitting a Statistical Model Using the Data 79
4.4 Design Considerations 82
4.5 Design Comparison 83
5 Two-Factor Factorial Experiments 87
5.1 Basic Concepts 87
5.2 Two Categorical Factors 89
5.3 The Analysis of Variance for a Two-factor Factorial 92
5.4 One Categorical Factor and One Continuous Factor 98
5.5 Two Continuous Factors 100
5.6 Design and Analysis When Some Factor Level Combinations Are Infeasible
105
6 Blocking 109
6.1 The Randomized Complete Block Design 109
6.2 Statistical Analysis of the RCBD 110
6.3 Blocking and Optimal Designs 113
7 The 2k Factorial Design 118
7.1 Introduction 118
7.2 The 22 Factorial Design 118
7.2.1 How Much Replication is Necessary? 119
7.3 The 23 Factorial Design 123
7.3.1 Replication of the 23 Design 128
7.4 A Single Replicate of the 2k Design 129
7.5 2k Designs are Optimal Designs 133
7.6 More About Replication of 2k Designs 135
7.6.1 Adding Center Runs to a 2k Design 137
7.7 Blocking in 2k Designs 138
8 Screening Experiments 140
8.1 Introduction 140
8.2 Regular Fractional Factorial Designs for Factor Screening 141
8.2.1 A General Method for Finding the Alias Relationships in Fractional
Factorial Designs 144
8.2.2 Dealiasing Effects 148
8.3 Nonregular Orthogonal Designs 150
8.4 Nonorthogonal Screening Designs 153
8.5 Definitive Screening Designs 156
8.5.1 Statistical Properties of a DSD 158
8.5.2 Constructing DSDs Using Conference Matrices 158
8.5.3 Constructing DSDs with Additional Two-level Categorical Factors 159
8.5.4 Constructing Orthogonally Blocked DSDs 159
8.5.5 Situations When You Should Use a Screening Design Other Than a DSD
159
8.5.6 Recommendations 160
8.6 Screening Summary 160
9 Experiments With Random Blocks 163
9.1 Introduction 163
9.2 Motivating Example: Design and Analysis 164
9.3 Matrix Formulation of the Model for an Experiment with Random Blocks
165
9.4 Design Considerations 166
9.5 A Screening Design with a Random Blocking Factor 166
9.6 Recommendations for Use of Designs with Random Blocks 170
10 Split-Plot Experiments 172
10.1 Introduction 172
10.2 Motivating Example: Design and Analysis 173
10.3 Matrix Formulation of the Model for a Split-plot Experiment 174
10.4 Design Considerations 176
10.5 Split-plot Screening Design 176
10.6 Recommendations for Use of Split-plot Designs 177
11 Response Surface Methods 180
11.1 Introduction 180
11.2 Optimization Techniques in RSM 182
11.3 Response Surface Designs 196
11.3.1 Classical Response Surface Designs 196
11.3.2 Definitive Screening Designs 197
11.3.3 Optimal Designs in RSM 201
12 Design For Models That are Nonlinear in the Parameters 203
12.1 Introduction 203
12.2 Design and Analysis of Exponential Decay 204
12.3 Analysis and Locally Optimal Design of the Michaelis-Menten Model 206
12.4 Yield Optimization as a Function of Reaction Temperature and Time 207
12.5 Mathematical Details for Constructing Optimal Designs for Nonlinear
Models 208
12.6 Optimal Design for Situations Where the Response is Binary 210
12.7 Multifactor Binomial Model Experiments 212
12.8 Mathematical Details for Constructing Optimal Designs for Generalized
Linear Models 213
Problems P-1
A JMP Scripting Commands For Computing Distribution Probabilities and
Quantiles A-1
References R-1
Index I-1