 Design of experiments

In general usage, design of experiments (DOE) or experimental design is the design of any informationgathering exercises where variation is present, whether under the full control of the experimenter or not. However, in statistics, these terms are usually used for controlled experiments. Other types of study, and their design, are discussed in the articles on opinion polls and statistical surveys (which are types of observational study), natural experiments and quasiexperiments (for example, quasiexperimental design). See Experiment for the distinction between these types of experiments or studies.
In the design of experiments, the experimenter is often interested in the effect of some process or intervention (the "treatment") on some objects (the "experimental units"), which may be people, parts of people, groups of people, plants, animals, materials, etc. Design of experiments is thus a discipline that has very broad application across all the natural and social sciences.
Contents
History of development
Controlled experimentation on scurvy
In 1747, while serving as surgeon on HMS Salisbury, James Lind carried out a controlled experiment to develop a cure for scurvy.^{[1]}
Lind selected 12 men from the ship, all suffering from scurvy. Lind limited his subjects to men who "were as similar as I could have them", that is he provided strict entry requirements to reduce extraneous variation. He divided them into six pairs, giving each pair different supplements to their basic diet for two weeks. The treatments were all remedies that had been proposed:
 A quart of cider every day
 Twenty five gutts (drops) of elixir vitriol (sulphuric acid) three times a day upon an empty stomach,
 One halfpint of seawater every day
 A mixture of garlic, mustard, and horseradish in a lump the size of a nutmeg
 Two spoonfuls of vinegar three times a day
 Two oranges and one lemon every day.
The men who had been given citrus fruits recovered dramatically within a week. One of them returned to duty after 6 days and the other cared for the rest. The others experienced some improvement, but nothing was comparable to the citrus fruits, which were proved to be substantially superior to the other treatments.
Statistical experiments, following Charles S. Peirce
Main article: Frequentist statisticsSee also: RandomizationA theory of statistical inference was developed by Charles S. Peirce in "Illustrations of the Logic of Science" (1877–1878) and "A Theory of Probable Inference" (1883), two publications that emphasized the importance of randomizationbased inference in statistics.
Randomized experiments
Main article: Random assignmentSee also: Repeated measures designCharles S. Peirce randomly assigned volunteers to a blinded, repeatedmeasures design to evaluate their ability to discriminate weights.^{[2]}^{[3]}^{[4]}^{[5]} Peirce's experiment inspired other researchers in psychology and education, which developed a research tradition of randomized experiments in laboratories and specialized textbooks in the 1800s.^{[2]}^{[3]}^{[4]}^{[5]}
Optimal designs for regression models
Main article: Response surface methodologySee also: Optimal designCharles S. Peirce also contributed the first Englishlanguage publication on an optimal design for regressionmodels in 1876.^{[6]} A pioneering optimal design for polynomial regression was suggested by Gergonne in 1815. In 1918 Kirstine Smith published optimal designs for polynomials of degree six (and less).
Sequences of experiments
Main article: Sequential analysisSee also: Multiarmed bandit problem, Gittins index, and Optimal designThe use of a sequence of experiments, where the design of each may depend on the results of previous experiments, including the possible decision to stop experimenting, is within the scope of Sequential analysis, a field that was pioneered^{[7]} by Abraham Wald in the context of sequential tests of statistical hypotheses.^{[8]} Herman Chernoff wrote an overview of optimal sequential designs,^{[9]} while adaptive designs have been surveyed by S. Zacks.^{[10]} One specific type of sequential design is the "twoarmed bandit", generalized to the multiarmed bandit, on which early work was done by Herbert Robbins in 1952.^{[11]}
Principles of experimental design, following Ronald A. Fisher
A methodology for designing experiments was proposed by Ronald A. Fisher, in his innovative book The Design of Experiments (1935). As an example, he described how to test the hypothesis that a certain lady could distinguish by flavour alone whether the milk or the tea was first placed in the cup. While this sounds like a frivolous application, it allowed him to illustrate the most important ideas of experimental design:
 Comparison
 In many fields of study it is hard to reproduce measured results exactly. Comparisons between treatments are much more reproducible and are usually preferable. Often one compares against a standard, scientific control, or traditional treatment that acts as baseline.
Random assignment is the process of assigning individuals at random to groups or to different groups in an experiment. The random assignment of individuals to groups (or conditions within a group) distinguishes a rigorous, "true" experiment from an adequate, but lessthanrigorous, "quasiexperiment".^{[12]}
 There is an extensive body of mathematical theory that explores the consequences of making the allocation of units to treatments by means of some random mechanism such as tables of random numbers, or the use of randomization devices such as playing cards or dice. Provided the sample size is adequate, the risks associated with random allocation (such as failing to obtain a representative sample in a survey, or having a serious imbalance in a key characteristic between a treatment group and a control group) are calculable and hence can be managed down to an acceptable level. Random does not mean haphazard, and great care must be taken that appropriate random methods are used.
 Replication
 Measurements are usually subject to variation and uncertainty. Measurements are repeated and full experiments are replicated to help identify the sources of variation, to better estimate the true effects of treatments, to further strengthen the experiment's reliability and validity, and to add to the existing knowledge of about the topic. ^{[13]} However, certain conditions must be met before the replication of the experiment is commenced: the original research question has been published in a peerreviewed journal or widely cited, the researcher is independent of the original experiment, the researcher must first try to replicate the original findings using the original data, and the writeup should state that the study conducted is a replication study that tried to follow the original study as strictly as possible. ^{[14]}
 Blocking
 Blocking is the arrangement of experimental units into groups (blocks) consisting of units that are similar to one another. Blocking reduces known but irrelevant sources of variation between units and thus allows greater precision in the estimation of the source of variation under study.
 Orthogonality concerns the forms of comparison (contrasts) that can be legitimately and efficiently carried out. Contrasts can be represented by vectors and sets of orthogonal contrasts are uncorrelated and independently distributed if the data are normal. Because of this independence, each orthogonal treatment provides different information to the others. If there are T treatments and T – 1 orthogonal contrasts, all the information that can be captured from the experiment is obtainable from the set of contrasts.
 Factorial experiments
 Use of factorial experiments instead of the onefactoratatime method. These are efficient at evaluating the effects and possible interactions of several factors (independent variables).
Analysis of the design of experiments was built on the foundation of the analysis of variance, a collection of models in which the observed variance is partitioned into components due to different factors which are estimated and/or tested.
Example
This example is attributed to Harold Hotelling.^{[9]} It conveys some of the flavor of those aspects of the subject that involve combinatorial designs.
The weights of eight objects are to be measured using a pan balance and set of standard weights. Each weighing measures the weight difference between objects placed in the left pan vs. any objects placed in the right pan by adding calibrated weights to the lighter pan until the balance is in equilibrium. Each measurement has a random error. The average error is zero; the standard deviations of the probability distribution of the errors is the same number σ on different weighings; and errors on different weighings are independent. Denote the true weights by
We consider two different experiments:
 Weigh each object in one pan, with the other pan empty. Let X_{i} be the measured weight of the ith object, for i = 1, ..., 8.
 Do the eight weighings according to the following schedule and let Y_{i} be the measured difference for i = 1, ..., 8:
 Then the estimated value of the weight θ_{1} is
 Similar estimates can be found for the weights of the other items. For example
The question of design of experiments is: which experiment is better?
The variance of the estimate X_{1} of θ_{1} is σ^{2} if we use the first experiment. But if we use the second experiment, the variance of the estimate given above is σ^{2}/8. Thus the second experiment gives us 8 times as much precision for the estimate of a single item, and estimates all items simultaneously, with the same precision. What is achieved with 8 weighings in the second experiment would require 64 weighings if items are weighed separately. However, note that the estimates for the items obtained in the second experiment have errors which are correlated with each other.
Many problems of the design of experiments involve combinatorial designs, as in this example.
Statistical control
It is best for a process to be in reasonable statistical control prior to conducting designed experiments. When this is not possible, proper blocking, replication, and randomization allow for the careful conduct of designed experiments.^{[15]} To control for nuisance variables, researchers institute control checks as additional measures. Investigators should ensure that uncontrolled influences (e.g., source credibility perception) are measured do not skew the findings of the study. A manipulation check is one example of a control check. Manipulation checks allow investigators to isolate the chief variables to strengthen support that these variables are operating as planned.
Experimental designs after Fisher
Some efficient designs for estimating several main effects simultaneously were found by Raj Chandra Bose and K. Kishen in 1940 at the Indian Statistical Institute, but remained little known until the PlackettBurman designs were published in Biometrika in 1946. About the same time, C. R. Rao introduced the concepts of orthogonal arrays as experimental designs. This was a concept which played a central role in the development of Taguchi methods by Genichi Taguchi, which took place during his visit to Indian Statistical Institute in early 1950s. His methods were successfully applied and adopted by Japanese and Indian industries and subsequently were also embraced by US industry albeit with some reservations.
In 1950, Gertrude Mary Cox and William Gemmell Cochran published the book Experimental Designs which became the major reference work on the design of experiments for statisticians for years afterwards.
Developments of the theory of linear models have encompassed and surpassed the cases that concerned early writers. Today, the theory rests on advanced topics in linear algebra, algebra and combinatorics.
As with other branches of statistics, experimental design is pursued using both frequentist and Bayesian approaches: In evaluating statistical procedures like experimental designs, frequentist statistics studies the sampling distribution while Bayesian statistics updates a probability distribution on the parameter space.
Some important contributors to the field of experimental designs are C. S. Peirce, R. A. Fisher, F. Yates, C. R. Rao, R. C. Bose, J. N. Srivastava, Shrikhande S. S., D. Raghavarao, W. G. Cochran, O. Kempthorne, W. T. Federer, A. S. Hedayat, J. A. Nelder, R. A. Bailey, J. Kiefer, W. J. Studden, F. Pukelsheim, D. R. Cox, H. P. Wynn, A. C. Atkinson, G. E. P. Box and G. Taguchi. The textbooks of D. Montgomery and R. Myers have reached generations of students and practitioners.
See also
 Control variable
 Research design
 Adversarial collaboration
 Bayesian experimental design
 Experimental techniques
 Glossary of experimental design
 Quasiexperimental design
 Randomized block design
 Generalized randomized block design
 Randomized controlled trial
 Law of large numbers
 Survey sampling
 Taguchi methods
 Clinical trial
 Firstinman study
 Probabilistic design
 Protocol (natural sciences)
 Controlling for a variable
 Multifactor design of experiments software
 Experimetrics: application of econometrics to economics experiments.
 Manipulation checks
Notes
 ^ Dunn, Peter (January 1997). "James Lind (171694) of Edinburgh and the treatment of scurvy". Archive of Disease in Childhood Foetal Neonatal (United Kingdom: British Medical Journal Publishing Group) 76 (1): 64–65. doi:10.1136/fn.76.1.F64. PMC 1720613. PMID 9059193. http://fn.bmj.com/cgi/content/full/76/1/F64. Retrieved 20090117.
 ^ ^{a} ^{b} Peirce, Charles Sanders; Jastrow, Joseph (1885). "On Small Differences in Sensation". Memoirs of the National Academy of Sciences 3: 73–83. http://psychclassics.yorku.ca/Peirce/smalldiffs.htm.
 ^ ^{a} ^{b} Hacking, Ian (September 1988). "Telepathy: Origins of Randomization in Experimental Design". Isis 79 (3): 427–451. doi:10.1086/354775. JSTOR 234674. MR1013489.
 ^ ^{a} ^{b} Stephen M. Stigler (November 1992). "A Historical View of Statistical Concepts in Psychology and Educational Research". American Journal of Education 101 (1): 60–70. doi:10.1086/444032. JSTOR 1085417.
 ^ ^{a} ^{b} Trudy Dehue (December 1997). "Deception, Efficiency, and Random Groups: Psychology and the Gradual Origination of the Random Group Design". Isis 88 (4): 653–673. doi:10.1086/383850. PMID 9519574.
 ^ Peirce, C. S. (1876). "Note on the Theory of the Economy of Research". Coast Survey Report: pp. 197–201., actually published 1879, NOAA PDF Eprint.
Reprinted in Collected Papers 7, paragraphs 139–157, also in Writings 4, pp. 72–78, and in Peirce, C. S. (July–August 1967). "Note on the Theory of the Economy of Research". Operations Research 15 (4): 643–648. doi:10.1287/opre.15.4.643. JSTOR 168276.  ^ Johnson, N.L. (1961). "Sequential analysis: a survey." Journal of the Royal Statistical Society, Series A. Vol. 124 (3), 372–411. (pages 375–376)
 ^ Wald, A. (1945) "Sequential Tests of Statistical Hypotheses", Annals of Mathematical Statistics, 16 (2), 117–186.
 ^ ^{a} ^{b} Herman Chernoff, Sequential Analysis and Optimal Design, SIAM Monograph, 1972.
 ^ Zacks, S. (1996) "Adaptive Designs for Parametric Models". In: Ghosh, S. and Rao, C. R., (Eds) (1996). "Design and Analysis of Experiments," Handbook of Statistics, Volume 13. NorthHolland. ISBN 0444820612. (pages 151–180)
 ^ Robbins, H. (1952). "Some Aspects of the Sequential Design of Experiments". Bulletin of the American Mathematical Society 58: 527–535. doi:10.1090/S000299041952096208.
 ^ Creswell, J.W. (2008). Educational research: Planning, conducting, and evaluating quantitative and qualitative research (3rd). Upper Saddle River, NJ: Prentice Hall. 2008, p. 300. ISBN: 10 0136135501
 ^ Dr. Hani (2009). "Replication study". http://www.experimentresources.com/replicationstudy.html. Retrieved 27 October 2011.
 ^ Burman, Leonard E. (2010). "A call for replication studies" (journal article). Public Finance Review. pp. 787793. doi:10.1177/1091142110385210. http://pfr.sagepub.com. Retrieved 27 October 2011.
 ^ Bisgaard, S (2008) "Must a Process be in Statistical Control before Conducting Designed Experiments?", Quality Engineering, ASQ, 20 (2), pp 143  176
References
 Peirce, C. S. (1877–1878), "Illustrations of the Logic of Science" (series), Popular Science Monthly, vols. 1213. Relevant individual papers:
 (1878 March), "The Doctrine of Chances", Popular Science Monthly, v. 12, March issue, pp. 604–615. Internet Archive Eprint.
 (1878 April), "The Probability of Induction", Popular Science Monthly, v. 12, pp. 705–718. Internet Archive Eprint.
 (1878 June), "The Order of Nature", Popular Science Monthly, v. 13, pp. 203–217.Internet Archive Eprint.
 (1878 August), "Deduction, Induction, and Hypothesis", Popular Science Monthly, v. 13, pp. 470–482. Internet Archive Eprint.
 Peirce, C. S. (1883), "A Theory of Probable Inference", Studies in Logic, pp. 126181, Little, Brown, and Company. (Reprinted 1983, John Benjamins Publishing Company, ISBN 9027232717)
Further reading
 Atkinson, A. C. and Donev, A. N. and Tobias, R. D. (2007). Optimum Experimental Designs, with SAS. Oxford University Press. pp. 511+xvi. ISBN 9780199296606. http://books.google.se/books?id=oIHsrw6NBmoC.
 Bailey, R.A. (2008). Design of Comparative Experiments. Cambridge University Press. ISBN 9780521683579. http://www.maths.qmul.ac.uk/~rab/DOEbook. Prepublication chapters are available online.
 Box, G. E., Hunter,W.G., Hunter, J.S., Hunter,W.G., "Statistics for Experimenters: Design, Innovation, and Discovery", 2nd Edition, Wiley, 2005, ISBN 0471718130
 Caliński, Tadeusz and Kageyama, Sanpei (2000). Block designs: A Randomization approach, Volume I: Analysis. Lecture Notes in Statistics. 150. New York: SpringerVerlag. ISBN 0387985786.
 Ghosh, S. and Rao, C. R., ed (1996). Design and Analysis of Experiments. Handbook of Statistics. 13. NorthHolland. ISBN 0444820612.
 Goos, Peter and Jones, Bradley (2011). Optimal Design of Experiments: A Case Study Approach. Wiley. ISBN 9780470744611.
 Hacking, Ian (September 1988). "Telepathy: Origins of Randomization in Experimental Design". Isis 79 (A Special Issue on Artifact and Experiment): 427–451. JSTOR 234674. MR1013489.
 Hinkelmann, Klaus and Kempthorne, Oscar (2008). Design and Analysis of Experiments. I and II (Second ed.). Wiley. ISBN 9780470385517.
 Hinkelmann, Klaus and Kempthorne, Oscar (2008). Design and Analysis of Experiments, Volume I: Introduction to Experimental Design (Second ed.). Wiley. ISBN 9780471727569. http://books.google.com/books?id=T3wWj2kVYZgC&printsec=frontcover&cad=4_0.
 Hinkelmann, Klaus and Kempthorne, Oscar (2005). Design and Analysis of Experiments, Volume 2: Advanced Experimental Design (First ed.). Wiley. ISBN 9780471551775. http://books.google.com/books?id=GiYc5nRVKf8C.
 Pearl, Judea. Causality: Models, Reasoning and Inference, Cambridge University Press, 2000.
 Peirce, C. S. (1876), "Note on the Theory of the Economy of Research", Appendix No. 14 in Coast Survey Report, pp. 197–201, NOAA PDF Eprint. Reprinted 1958 in Collected Papers of Charles Sanders Peirce 7, paragraphs 139–157 and in 1967 in Operations Research 15 (4): pp. 643–648, abstract at JSTOR. . doi:10.1287/opre.15.4.643.
 Smith, Kirstine (1918). "On the Standard Deviations of Adjusted and Interpolated Values of an Observed Polynomial Function and its Constants and the Guidance They Give Towards a Proper Choice of the Distribution of the Observations". Biometrika 12: 1–85. JSTOR 2331929.
External links
 A chapter from a "NIST/SEMATECH Handbook on Engineering Statistics" at NIST
 BoxBehnken designs from a "NIST/SEMATECH Handbook on Engineering Statistics" ] at NIST
 Articles on Design of Experiments
 Case Studies and Articles on Design of Experiments (DOE)
 Czitrom (1999) "OneFactorataTime Versus Designed Experiments", American Statistician, 53, 2.
 Design Resources Server a mobile library on Design of Experiments. The server is dynamic in nature and new additions would be posted on this site from time to time.
 Gosset: A GeneralPurpose Program for Designing Experiments
 SAS Examples for Experimental Design
 Matlab SUrrogate MOdeling Toolbox  SUMO Toolbox  Matlab code for Design of Experiments + Sequential Design + Surrogate Modeling
 Design DB: A database of combinatorial, statistical, experimental block designs
 The IOptimal Design Assistant: a free online library of IOptimal designs
 Warning Signs in Experimental Design and Interpretation by Peter Norvig, chief of research at Google
 Knowledge Base, Research Methods: A good explanation of the basic idea of experimental designs
 The Controlled Experiment vs. The Comparative Experiment: "How to experiment" for science fair projects
Statistics Descriptive statistics Summary tablesPearson productmoment correlation · Rank correlation (Spearman's rho, Kendall's tau) · Partial correlation · Scatter plotBar chart · Biplot · Box plot · Control chart · Correlogram · Forest plot · Histogram · QQ plot · Run chart · Scatter plot · Stemplot · Radar chartData collection Designing studiesDesign of experiments · Factorial experiment · Randomized experiment · Random assignment · Replication · Blocking · Optimal designUncontrolled studiesStatistical inference Frequentist inferenceSpecific testsZtest (normal) · Student's ttest · Ftest · Pearson's chisquared test · Wald test · Mann–Whitney U · Shapiro–Wilk · Signedrank · Kolmogorov–Smirnov testCorrelation and regression analysis Errors and residuals · Regression model validation · Mixed effects models · Simultaneous equations modelsNonstandard predictorsPartition of varianceCategorical, multivariate, timeseries, or survival analysis Decomposition (Trend · Stationary process) · ARMA model · ARIMA model · Vector autoregression · Spectral density estimationApplications Category · Portal · Outline · Index Biomedical research: Clinical study design / Design of experiments Overview Controlled study
(EBM I to II1; A to B)Observational study
(EBM II2 to II3; B to C)Epidemiology/
methodsoccurrence: Incidence (Cumulative incidence) · Prevalence (Point prevalence, Period prevalence)
association: absolute (Absolute risk reduction, Attributable risk, Attributable risk percent) · relative (Relative risk, Odds ratio, Hazard ratio)
other: Virulence · Infectivity · Mortality rate · Morbidity · Case fatality · Specificity and sensitivity · Likelihoodratios · Pre/posttest probabilityTrial/test types Analysis of clinical trials Risk–benefit analysis
Interpretation of results Category · Glossary · List of topics
Wikimedia Foundation. 2010.
Look at other dictionaries:
Design of Experiments — Die statistische Versuchsplanung (englisch design of experiments, DOE) wird bei Entwicklung und Optimierung von Produkten oder Prozessen eingesetzt. Da Versuche Ressourcen benötigen (Personal, Zeit, Geräte usw.), sieht sich der… … Deutsch Wikipedia
Design of Experiments — n. DOE, plan or model prepared and followed when gathering data in an experiment … English contemporary dictionary
Multifactor design of experiments software — Software that is used for designing factorial experiments plays an important role in scientific experiments generally and represents a route to the implementation of design of experiments procedures that derive from statistical and combinatoric… … Wikipedia
The Design of Experiments — is a 1935 book by the British statistician R.A. Fisher, which effectively founded the field of experimental design … Wikipedia
Design Expert — Entwickler Stat Ease, Inc. Aktuelle Version 8.0.1 (2010) Betriebssystem Windows Kategorie Statistik Software Lizenz … Deutsch Wikipedia
Design for Six Sigma — (DFSS) is a separate and emerging business process management methodology related to traditional Six Sigma. While the tools and order used in Six Sigma require a process to be in place and functioning, DFSS has the objective of determining the… … Wikipedia
Design theory — can refer to any theory relating to design in general. Design theory may also refer to: Engineering and industrial design C K theory Design science C K theory Mathematics Combinatorial design Block design Symmetric design Design of experiments… … Wikipedia
Design of quasiexperiments — The design of a quasi experiment relates to a particular type of experiment or other study in which one has little or no control over the allocation of the treatments or other factors being studied. The key difference in this empirical approach… … Wikipedia
Design effect — In statistics, the design effect is an adjustment used in some kinds of studies, such as cluster randomised trials, to allow for the design structure. The adjustment inflates the variance of parameter estimates, and therefore their standard… … Wikipedia
Experiments in Art and Technology — (E.A.T.) was a non profit and tax exempt organization established to develop collaborations between artists and engineers. E.A.T. initiated and carried out projects that expanded the role of the artist in contemporary society and helped eliminate … Wikipedia