Wiley
Wiley.com
Print this page Share

Modern Experimental Design

ISBN: 978-0-471-21077-1
593 pages
February 2007
Modern Experimental Design (0471210773) cover image
A complete and well-balanced introduction to modern experimental design

Using current research and discussion of the topic along with clear applications, Modern Experimental Design highlights the guiding role of statistical principles in experimental design construction. This text can serve as both an applied introduction as well as a concise review of the essential types of experimental designs and their applications.

Topical coverage includes designs containing one or multiple factors, designs with at least one blocking factor, split-unit designs and their variations as well as supersaturated and Plackett-Burman designs. In addition, the text contains extensive treatment of:

  • Conditional effects analysis as a proposed general method of analysis
  • Multiresponse optimization
  • Space-filling designs, including Latin hypercube and uniform designs
  • Restricted regions of operability and debarred observations
  • Analysis of Means (ANOM) used to analyze data from various types of designs
  • The application of available software, including Design-Expert, JMP, and MINITAB

This text provides thorough coverage of the topic while also introducing the reader to new approaches. Using a large number of references with detailed analyses of datasets, Modern Experimental Design works as a well-rounded learning tool for beginners as well as a valuable resource for practitioners.

See More
Preface.

1. Introduction.

1.1 Experiments All Around Us.

1.2 Objectives for Experimental Designs.

1.3 Planned Experimentation versus use of Observational Data.

1.4 Basic Design Concepts.

1.5 Terminology.

1.6 Steps for the Design of Experiments.

1.7 Processes Should Ideally be in a State of Statistical Control.

1.8 Types of Experimental Designs.

1.9 Analysis of Means.

1.10 Missing Data.

1.11 Experimental Designs and Six Sigma.

1.12 Quasi-Experimental Design.

1.13 Summary.

 2. Completely Randomized Design.

2.1 completely Randomized Design.

2.2 Analysis of Means.

2.3 Software for Experimental Design.

2.4 Missing Values.

2.5 Summary.

3. Designs that Incorporate Extraneous (Blocking) Factors.

3.1 Randomized Block Design.

3.2 Incomplete Block Designs.

Graeco-Latin Square Design.

3.5 Youden Squares.

3.6 Missing Values.

3.7 Software.

3.8 Summary.

4. Full Factorial Designs with Two Levels.

4.1 The nature of Factorial Designs.

4.2 The Deleterious Effects of Interactions.

4.3 Effect Estimates.

4.4 Why Not One-Factor-at-a-Time Designs?

4.5 ANOVA Table for Unreplicated Two-factor Design?

4.6 The 23 Design.

4.7 Built-in Replication.

4.8 Multiple Readings versus Replicates.

4.9 Reality versus Textbook Examples.

4.10 Bad data in Factorial Designs.

4.11 Normal Probability Plot Methods.

4.12 Missing Data in Factorial Designs.

4.13 Inaccurate Levels in Factorial Designs.

4.14 Checking for Statistical Control.

4.15 Blocking 2k Designs.

4.16 The Role of Expected Mean Squares in Experimental Design.

4.17 Hypothesis Tests with Only Random Factors in 2k Designs? Avoid Them!

4.18 Hierarchical versus Nonhierarchical Models.

4.19 Hard-to-Change factors.

4.20 Factors Not reset.

4.21 Detecting Dispersion Effects.

4.22 Software.

4.23 Summary.

5. Fractional factorial Designs with Two-Levels.

5.1 2k-1 Designs.

5.2 2k-2 Designs.

5.3 Designs with k & p = 16.

5.4 Utility of Small Fractional factorials vis-à-vis Normal Probability Plots.

5.5 Design Efficiency.

5.6 Retrieving a Lost Defining Relation.

5.7 Minimum Aberration Designs and Minimum Confounded Effects Designs.

5.8 Blocking Factorial Design.

5.9 Foldover Designs.

5.10 John’s ¾ Designs.

5.11 Projective Properties of 2k-p Designs.

5.12 Small Fractions and Irregular Designs.

5.13 An Example of Sequential Experimentation.

5.14 Inadvertent Nonorthogonality—Case Study.

5.15 Fractional factorial Designs for Natural Subsets of factors.

5.16 Relationship Between Fractional Factorials and Latin Squares.

5.17 Alternatives to Fractional Factorials.

5.18 Missing and Bad data.

5.19 Plackett-Burman Designs.

5.20 Software.

5.21 Summary.

6. Designs With More Than Two Levels.

6.1 3k Designs.

6.2 Conditional Effects.

6.3 3k-p Designs.

6.4 Mixed factorials.

6.5 Mixed Fractional Factorials.

6.6 Orthogonal Arrays with Mixed levels.

6.7 Minimum Aberration Designs and Minimum Confounded Effects Designs.

6.8 Four or More Levels.

6.9 Software.

6.10 Catalog of Designs.

6.11 Summary.

7. Nested Designs.

7.1 Various Examples.

7.2 Software Shortcomings.

7.3 Staggered Nested Designs.

7.4 Nested and Staggered Nested Designs with factorial Structure.

7.5 Estimating Variance Components.

7.6 ANOM for Nested Designs?

7.7 Summary.

8. Robust Designs.

8.1 “Taguchi Designs?”

8.2 Identification of Dispersion Effects.

8.3 Designs with Noise factors.

8.4 Product Array, Combined Array, or Compound Array?

8.5 Software.

8.6 Further Reading.

8.7 Summary.

9. Split-Unit, Split-Lot, and Related Designs.

9.1 Split-Unit Design.

9.2 Split-Lot Design.

9.3 Commonalities and Differences Between these Designs.

9.4 Software.

9.5 Summary.

10. Response Surface Designs.

10.1 Response Surface Experimentation: One Design or More Than One?

10.2 Which Designs?

10.3 Classical Response Surface Designs versus Alternatives.

10.4 Methods of Steepest Ascent (Descent).

10.5 Central Composite Designs.

10.6 Properties of Space-Filling Designs.

10.7 Applications of Uniform Designs.

10.8 Box-Behnken Designs.

10.9 Conditional Effects?

10.10 Other Response Surface Designs.

10.11 Blocking Response Surface Designs.

10.12 Comparison of Designs.

10.13 Analyzing the Fitted Surface.

10.14 Response Surface Designs for Computer Simulations.

10.15 ANOM with Response Surface Designs?

10.16 Further reading.

10.17 The Present and Future Direction of response Surface Designs.

10.18 Software.

10.19 Catalogs of Designs.

10.20 Summary.

11. Repeated Measure Designs.

  11.1 One factor.

11.2 More Than One Factor.

11.3 Crossover Designs.

11.4 Designs for Carryover Effects.

11.5 How Many Repeated Measures?

11.6 Further Reading.

11.7 Software.

11.8 Summary.

12. Multiple Responses.

12.1 Overlaying Contour Plots.

12.2 Seeking Multiple Response Optimization with Desirability Functions.

12.3 Dual response Optimization.

  12.4 Designs Used with Multiple Responses.

12.5 Applications.

12.6 Multiple Response Optimization variations.

12.7 The Importance of Analysis.

12.8 Software.

12.9 Summary.

13. Miscellaneous Design Topics.

13.1 One-Factor-at-a-Time Designs.

13.2 Cotter Designs.

13.3 Rotation Designs.

13.4 Screening Designs.

13.5 Design of Experiments for Analytic Studies.

13.6 Equileverage Designs.

13.7 Optimal Designs.

13.8 Designs for Restricted Regions of Operability.

13.9 Space-Filling, Designs.

13.10 Trend-Free Designs.

13.11 Cost-Minimizing Designs.

13.12 Mixture Designs.

13.13 Design of Measurement Capability Studies.

13.14 Design of Computer Experiments.

13.15 Design of Experiments for Categorical Response variables.

13.16 Weighing Designs and Calibration Designs.

13.17 Designs for Assessing the Capability of a System.

13.18 Designs for Nonlinear Models.

13.19 Model-Robust Designs.

13.20 Designs and Analyses for Non-normal Responses.

13.21 Design of Microarray Experiments.

13.22 Multi-Vari Plot.

13.23 Evolutionary Operation.

13.24 Software.

13.25 Summary.

14. Tying It All Together.

14.1 Training for Experimental Design Use.

Answers to Selected Exercises.

Appendix: Statistical Tables.

Author Inde.

Subject Index.

See More
THOMAS P. RYAN, PhD, has served on the Editorial Review Board of the Journal of Quality Technology since 1990. He is the author of three other books published by Wiley, and is an elected Fellow of the American Statistical Association, the American Society for Quality, and the Royal Statistical Society. He is currently teaching advanced courses on design of experiments and engineering statistics at statistics.com, and serves as a consultant to Cytel Software Corporation.
See More
  • Emphasis on investigation, type of design, available options and factors, and construction of two or more samples
  • Thematic: belief in a state of statistical control before experimentation
  • Incorporation of real-world design problems throughout the book -- with particular attention to factors
  • Important and current discussion of the analysis of data from factorial experiments with large interactions
  • Inclusion of analysis of means (ANOM) which is woefully lacking in the competition
  • Extensive tie-in with software for design
See More
"A good introduction to statistical design of experiments, covering a wide variety of topics in a  well readable and structured way." (Statistical Papers 2008)

"Modern Experimental Design is a must-have reference for anyone who will be designing experiments or for statisticians interested in remaining on the leading edge of this important area." (Journal of the American Statistical Association)

"This attractive text is written in a precise style that interconnects and builds on discussion, examples, and methods from chapter to chapter. Especially pleasant are the care and attention devoted to details. The comprehensive and easy-to-read style of writing suggests that statistics is fun and exploratory." (Computing Reviews, 2008)

"... this book will prove to be a boon for advances in experimental design." (Zentralblatt MATH, 2007)

"…the author's wealth of knowledge is immediately evident…an excellent expose concerning the actual statistical planning or 'design' of experiments." (Biometrics, September 2007)

"A very interesting and useful book…highly recommended." (CHOICE, August 2007)

"It is definitely nice to have such a book in the library." (International Statistical Review, 2007)

See More
by Rudolf Freund, Ramon Littell, Lee Creighton, Thomas P. Ryan
US $200.00 Buy
See More
Back to Top