Introduction Example: rainfall and grassland Basic elements of an experiment Experiments and experiment-like studies Models and data analysis Linear Statistical Models Linear vector spaces Basic linear model The hat matrix, least-squares estimates, and design information matrix The partitioned linear model The reduced normal equations Linear and quadratic forms Estimation and information Hypothesis testing and information Blocking and information Completely Randomized Designs Introduction Models Matrix formulation Influence of design on estimation Influence of design on hypothesis testing Randomized Complete Blocks and Related Designs Introduction A model Matrix formulation Influence of design on estimation Influence of design on hypothesis testing Orthogonality and "Condition E" Latin Squares and Related Designs Introduction Replicated Latin squares A model Matrix formulation Influence of design on quality of inference More general constructions: Graeco-Latin squares Some Data Analysis for CRDs and Orthogonally Blocked Designs Introduction Diagnostics Power transformations Basic inference Multiple comparisons Balanced Incomplete Block Designs Introduction A model Matrix formulation Influence of design on quality of inference More general constructions Random Block Effects Introduction Inter- and intra-block analysis CBDs and augmented CBDs BIBDs Combined estimator Why can information be "recovered"? CBD reprise Factorial Treatment Structure Introduction An overparameterized model An equivalent full-rank model Estimation Partitioning of variability and hypothesis testing Factorial experiments as CRDs, CBDs, LSDs, and BIBDs Model reduction Split-Plot Designs Introduction SPD(R,B) SPD(B,B) More than two experimental factors More than two strata of experimental units Two-Level Factorial Experiments: Basics Introduction Example: bacteria and nuclease Two-level factorial structure Estimation of treatment contrasts Testing factorial effects Additional guidelines for model editing Two-Level Factorial Experiments: Blocking Introduction Complete blocks Balanced incomplete block designs Regular blocks of size 2f-1 Regular blocks of size 2f-2 Regular blocks: general case Two-Level Factorial Experiments: Fractional Factorials Introduction Regular fractional factorial designs Analysis Example: bacteria and bacteriocin Comparison of fractions Blocking regular fractional factorial designs Augmenting regular fractional factorial designs Irregular fractional factorial designs Factorial Group Screening Experiments Introduction Example: semiconductors and simulation Factorial structure of group screening designs Group screening design considerations Case study Regression Experiments: First-Order Polynomial Models Introduction Polynomial models Designs for first-order models Blocking experiments for first-order models Split-plot regression experiments Diagnostics Regression Experiments: Second-Order Polynomial Models Introduction Quadratic polynomial models Designs for second-order models Design scaling and information Orthogonal blocking Split-plot designs Bias due to omitted model terms Introduction to Optimal Design Introduction Optimal design fundamentals Optimality criteria Algorithms Appendices References Index A Conclusion and Exercises appear at the end of each chapter.
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