| Preface | p. vii |
| One-Sample Problems | |
| Introduction | p. 3 |
| The History of the One-Sample GOF Problem | p. 3 |
| Example Datasets | p. 4 |
| Pseudo-Random Generator Data | p. 4 |
| Pulse Rate Data | p. 5 |
| Cultivars Data | p. 6 |
| The Pearson Chi-Squared Test | p. 8 |
| p. 8 |
| Generalisations of the Pearson x2 Test | p. 13 |
| A Note on the Nuisance Parameter Estimation | p. 14 |
| p. earson X2 Te |
| Preliminaries (Building Blocks) | p. 19 |
| The Empirical Distribution Function | p. 19 |
| Definition and Construction | p. 19 |
| Rationale for Using the EDF | p. 21 |
| Empirical Processes | p. 22 |
| Definition | p. 22 |
| Weak Convergence | p. 23 |
| Kac-Siegert Decomposition of Gausian Processes | p. 24 |
| The Quantile Function and the Quantile Process | p. 27 |
| The Quantile Function and Its Estimator | p. 27 |
| The Quantile Process | p. 28 |
| Comparison Distribution | p. 29 |
| Hilbert Spaces | p. 30 |
| Orthonormal Functions | p. 33 |
| The Fourier Basis | p. 33 |
| Orthonormal Polynomials | p. 33 |
| Parameter Estimation | p. 34 |
| Locally Asymptotically Linear Estimators | p. 34 |
| Method of Moments Estimators | p. 35 |
| Efficiency and Semiparametric Inference | p. 36 |
| Nonparametric Density Estimation | p. 37 |
| Introduction | p. 37 |
| Orthogonal Series Estimators | p. 39 |
| Kernel Density Estimation | p. 42 |
| Regression-Based Density Estimation | p. 42 |
| Hypothesis Testing | p. 42 |
| General Construction of a Hypothesis Test | p. 43 |
| Optimally Criteria | p. 44 |
| The Neyman-Pearson Lemma | p. 47 |
| Graphical Tools | p. 49 |
| Histograms and Box Plots | p. 49 |
| p. The Histogram |
| The Box Plot | p. 52 |
| Probability Plots and Comparison Distribution | p. 56 |
| Population Probability Plots | p. 56 |
| PP and QQ plots | p. 57 |
| p. 62 |
| Population Comparison Distributions | p. 62 |
| Empirical Comparison Distributions | p. 68 |
| Comparison Distribution for Discrete Data | p. 73 |
| Smooth Tests | p. 77 |
| Smooth Models | p. 77 |
| Construction of the Smooth Model | p. 77 |
| Smooth Tests | p. 82 |
| Simple Null Hypotheses | p. 82 |
| Composite Null Hypotheses | p. 88 |
| p. 95 |
| Consistency, Dilution Effects and Order Selection | p. 95 |
| Order Selection Within a Finite Horizon | p. 98 |
| Order Selection Within an Infinite Horizon | p. 102 |
| Subset Selection Within a Finite Homon | p. 103 |
| Improved Density Estimates | p. 107 |
| Smooth Tests for Discrete Distributions | p. 108 |
| Introduction | p. 108 |
| The Simple Null Hypothesis Case | p. 108 |
| The Composite Null Hypothesis Case | p. 109 |
| p. 111 |
| The Semiparametric Hypotheses | p. 111 |
| Semiparametric Tests | p. 112 |
| A Distance Function | p. 114 |
| Interpretation and Estimation of the Nuisance Parameter | p. 114 |
| The Quadratic Inference Function | p. 115 |
| Relation with the Empirically Rescaled Smooth Tests | p. 116 |
| Example | p. 117 |
| Some Practical Guidelines for Smooth Tests | p. 121 |
| Methods Based on the Empirical Distribution Function | p. 123 |
| The Kolmogorov-Smirnov Test | p. 123 |
| Definition | p. 123 |
| Null Distribution | p. 125 |
| Presence of Nuisance Parameters | p. 127 |
| Tests as Integrals of Empirical Processes | p. 129 |
| The Anderson-Darling Statistics | p. 129 |
| Principal Components Decomposition of the Test Statistic | p. 130 |
| Null Distribution | p. 137 |
| The Watson Test | p. 142 |
| Generalisations of EDF Tests | p. 144 |
| Tests Based on the Empirical Quantile Function(EQF) | p. 145 |
| Tests Based on the Empirical Characteristic Function (ECF) | p. 151 |
| Miscellaneous Tests Based on Empirical Functionalof F | p. 153 |
| The Sample Space Partition Tests | p. 155 |
| Another Look at the Anderson-Darting Statistic | p. 155 |
| The Sample Space Partition Test | p. 155 |
| Some Further Bibliographic Notes | p. 158 |
| Some Practical Guidelines for EDF Tests | p. 159 |
| Two-Sample and K-Sample Problems | |
| Introduction | p. 163 |
| The Problem Defined | p. 164 |
| The Null Hypothesis of the General Two-Sample Problem | p. 164 |
| The Null Hypothesis of the General K-SampleProblem | p. 165 |
| Example Datasets | p. 166 |
| Gene Expression in Colorectal Cancer Patients | p. 166 |
| Travel Times | p. 167 |
| Preliminaries (Building Blocks) | p. 171 |
| Permutation Tests | p. 171 |
| Introduction by Example | p. 171 |
| Some Permutation and Randomization Test Theory | p. 175 |
| Linear Rank Tests | p. 179 |
| Simple Linear Rank Statistics | p. 179 |
| Locally Most Powerful Linear Rank Tests | p. 187 |
| Adaptive Linear Rank Tests | p. 190 |
| The Pooled Empirical Distribution Function | p. 190 |
| The Comparison Distribution | p. 191 |
| The Quantile Process | p. 192 |
| Contrast Processes | p. 192 |
| Comparison Distribution Processes | p. 194 |
| Stochastic Ordering and Related Properties | p. 196 |
| Graphical Tools | p. 201 |
| PP and QQ Plots | p. 201 |
| Population Plots | p. 201 |
| Empirical PP and QQ Plots | p. 205 |
| Comparisons Distributions | p. 213 |
| The Population Comparison Distribution | p. 213 |
| The Empirical Comparison Distribution | p. 213 |
| Some Important Two-Sample Tests | p. 221 |
| The Relation Between Statistical Tests and Hypotheses | p. 222 |
| Introduction | p. 222 |
| The Wilcoxon Rank Sum and the Mann-Whitney Tests | p. 225 |
| Introduction | p. 225 |
| The Hypotheses | p. 226 |
| The Test Statistics | p. 227 |
| The Null Distribution | p. 228 |
| The WMW Test as a LMPRT | p. 230 |
| The MW Statistic as an Estimator of tt | p. 232 |
| The Hodges-Lehmann Estimator | p. 234 |
| Examples | p. 234 |
| The Diagnostic Property of Two-Sample Tests | p. 243 |
| The Semiparametric Framework | p. 244 |
| Natural and Implied Null Hypotheses | p. 246 |
| The WMW Test in the Semiparametric Framework | p. 246 |
| Empirical Variance Estimators of Simple Linear Rank Statistics | p. 250 |
| Optimal Linear Rank Tests for Normal Location-ShiftModels | p. 253 |
| Rank Tests for Scale Differences | p. 254 |
| The Scale-Difference Model | p. 255 |
| The Capon and Klotz Tests | p. 256 |
| Some Other Important Tests | p. 257 |
| Conclusion | p. 265 |
| The Kruskal-Wallis Test and the ANOVA F | |
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