E-Book, Englisch, 856 Seiten
Onyiah Design and Analysis of Experiments
1. Auflage 2011
ISBN: 978-1-4200-6055-3
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
Classical and Regression Approaches with SAS
E-Book, Englisch, 856 Seiten
Reihe: Statistics: A Series of Textbooks and Monographs
            ISBN: 978-1-4200-6055-3 
            Verlag: Taylor & Francis
            
 Format: PDF
    Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
Unlike other books on the modeling and analysis of experimental data, Design and Analysis of Experiments: Classical and Regression Approaches with SAS not only covers classical experimental design theory, it also explores regression approaches. Capitalizing on the availability of cutting-edge software, the author uses both manual methods and SAS programs to carry out analyses. The book presents most of the different designs covered in a typical experimental design course. It discusses the requirements for good experimentation, the completely randomized design, the use of orthogonal contrast to test hypotheses, and the model adequacy check. With an emphasis on two-factor factorial experiments, the author analyzes repeated measures as well as fixed, random, and mixed effects models. He also describes designs with randomization restrictions, before delving into the special cases of the 2k and 3k factorial designs, including fractional replication and confounding. In addition, the book covers response surfaces, balanced incomplete block and hierarchical designs, ANOVA, ANCOVA, and MANOVA. Fortifying the theory and computations with practical exercises and supplemental material, this distinctive text provides a modern, comprehensive treatment of experimental design and analysis.
Zielgruppe
Undergraduate students in statistics; graduate students and researchers in applied statistics, pharmaceuticals, business, biology, engineering, and computer science.
Autoren/Hrsg.
Weitere Infos & Material
Introductory Statistical Inference and Regression Analysis 
Elementary Statistical Inference 
Regression Analysis 
Experiments, the Completely Randomized Design (CRD)—Classical and Regression Approaches 
Experiments 
Experiments to Compare Treatments 
Some Basic Ideas 
Requirements of a Good Experiment 
One-Way Experimental Layout or the CRD: Design and Analysis 
Analysis of Experimental Data (Fixed Effects Model) 
Expected Values for the Sums of Squares 
The Analysis of Variance (ANOVA) Table 
Follow-Up Analysis to Check for Validity of the Model 
Checking Model Assumptions 
Applications of Orthogonal Contrasts 
Regression Models for the CRD (One-Way Layout) 
Regression Models for ANOVA for CRD Using Orthogonal Contrasts 
Regression Model for Example 2.2 Using Orthogonal Contrasts Coding (Helmert Coding) 
Regression Model for Example 2.3 Using Orthogonal Contrasts Coding 
Two-Factor Factorial Experiments and Repeated Measures Designs (RMDs) 
The Full Two-Factor Factorial Experiment (Two-Way ANOVA with Replication)—Fixed Effects Model 
Two-Factor Factorial Effects (Random Effects Model) 
Two-Factor Factorial Experiment (Mixed Effects Model) 
One-Way RMD 
Mixed Randomized Complete Block Design (RCBD) (Involving Two Factors) 
Regression Approaches to the Analysis of Responses of Two-Factor Experiments and RMDs 
Regression Models for the Two-Way ANOVA (Full Two-Factor Factorial Experiment) 
The Regression Model for Two-Factor Factorial Experiment Using Reference Cell Coding for Dummy Variables 
Use of SAS for the Analysis of Responses of Mixed Models 
Use of PROC Mixed in the Analysis of Responses of RMD in SAS 
Residual Analysis for the Vitamin Experiment 
Regression Model of the Two-Factor Factorial Design Using Orthogonal Contrasts 
Use of PROC Mixed in SAS to Estimate Variance Components When Levels of Factors Are Random 
Designs with Randomization Restriction—Randomized Complete Block, Latin Squares, and Related Designs 
RCBD 
Testing for Differences in Block Means 
Estimation of a Missing Value in the RCBD 
Latin Squares 
Some Expected Mean Squares 
Replications in Latin Square Design 
The Graeco–Latin Square Design 
Estimation of Parameters of the Model and Extracting Residuals 
Regression Models for Randomized Complete Block, Latin Squares, and Graeco–Latin Square Designs 
Regression Models for the RCBD 
SAS Analysis of Responses of Example 5.1 Using Dummy Regression (Effects Coding Method) 
Dummy Variables Regression Model for the RCBD (Reference Cell Method) 
Application of Dummy Variables Regression Model to Example 5.2 (Effects Coding Method) 
Regression Model for RCBD of Example 5.2 (Reference Cell Coding) 
Regression Models for the Latin Square Design 
Dummy Variables Regression Analysis for Example 5.5 (Reference Cell Method) 
Regression Model for Example 5.7 Using Effects Coding Method to Define Dummy Variables 
Dummy Variables Regression Model for Example 5.7 (Reference Cell Coding Method) 
Regression Model for the Graeco–Latin Square Design 
Regression Model for Graeco–Latin Square (Reference Cell Method) 
Regression Model for the RCBD Using Orthogonal Contrasts 
Factorial Designs—The 2k and 3k Factorial Designs 
Advantages of Factorial Designs 
The 2k and 3k Factorial Designs 
Contrasts for Factorial Effects in 22 and 23 Factorial Designs 
The General 2k Factorial Design 
Factorial Effects in 2k Factorial Designs 
The 3k Factorial Designs 
Extension to k Factors at Three Levels 
Regression Models for 2k and 3k Factorial Designs 
Regression Models for the 22 Factorial Design Using Effects Coding Method 
Regression Model for Example 7.1 Using Reference Cell to Define Dummy Variables 
General Regression Models for the Three-Way Factorial Design 
The General Regression Model for a Three-Way ANOVA (Reference Cell Coding Method) 
Regression Models for the Four-Factor Factorial Design Using Effects Coding Method 
Regression Analysis for a Four-Factor Factorial Experiment Using Reference Cell Coding to Define Dummy Variables 
Dummy Variables Regression Models for Experiment in 3k Factorial Designs 
Fitting Regression Model for Example 7.5 (Effects Coding Method) 
Fitting Regression Model 8.22 (Reference Cell Coding Method) to Responses of Experiment of Example 7.5 
Fractional Replication and Confounding in 2k and 3k Factorial Designs 
Construction of the 2k-1 Fractional Factorial Design 
Contrasts of the 2k-1 Fractional Factorial Design 
The General 2k-p Fractional Factorial Design 
Resolution of a Fractional Factorial Design 
Fractional Replication in 3k Factorial Designs 
The General 3k-p Factorial Design 
Confounding in 2k and 3k Factorial Designs 
Confounding in 2k Factorial Designs 
Confounding in 3k Factorial Designs 
Partial Confounding in Factorial Designs 
Balanced Incomplete Blocks, Lattices, and Nested Designs 
The Balanced Incomplete Block Design 
Comparison of Two Treatments 
Orthogonal Contrasts in Balanced Incomplete Block Designs 
Lattice Designs 
Partially Balanced Lattices 
Nested or Hierarchical Designs 
Designs with Nested and Crossed Factors 
Methods for Fitting Response Surfaces and Analysis of Covariance 
Method of Steepest Ascent 
Designs for Fitting Response Surfaces 
Fitting a First-Order Model to the Response Surface 
Fitting and Analysis of the Second-Order Model 
Analysis of Covariance (ANCOVA) 
One-Way ANCOVA 
Other Covariance Models 
Multivariate Analysis of Variance (MANOVA) 
Link between ANOVA and MANOVA 
One-Way MANOVA 
MANOVA—The Randomized Complete Block Experiment 
Multivariate Two-Way Experimental Layout with Interaction 
Two-Stage Multivariate Nested or Hierarchical Design 
The Multivariate Latin Square Design 
Appendix: Statistical Tables 
Index 
Exercises and References appear at the end of each chapter.





