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Design of Experiments. Dr.... Mary Whiteside. Experiments. Clinical trials in medicine Taguchi experiments in manufacturing Advertising trials in market research Comparisons of hybrid seeds in agriculture Comparisons of training programs in management Decision making tasks using IS
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Design of Experiments Dr.... Mary Whiteside
Experiments • Clinical trials in medicine • Taguchi experiments in manufacturing • Advertising trials in market research • Comparisons of hybrid seeds in agriculture • Comparisons of training programs in management • Decision making tasks using IS • Comparisons of audit results
Observational vs. experimental studies • Key difference - an independent variable must be controlled, not observed • Observational studies - contributions, predictions • Methodology: Regression, Analysis of Variance • Experiments - treatment effects • Methodology: Analysis of Variance, Analysis of Covariance, GLM ANOVA
R2 - measures goodness of fit • Important in observational studies whose purpose is prediction • Less important in experiments whose purpose is identification of factor effects
Examples of research issues • Do pets help heart patients live? • Does hail suppression activity alter rainfall? • Are thin people healthier than people of average weight? • Does coffee increase risk of heart disease? • Do blood transfusions help or hurt patients? • Do smokers’ children face increased risk of lung cancer?
Definitions • Treatment • Factor • Levels • Response • Co-variate • Replication • Experimental Units • Repeat Tests
Treatment • A treatment is a particular combination of levels of the factors involved in an experiment • Examples • Transfusion when slightly anemic • Transfusion only when severely anemic • No coffee • Two cups of decaf
Factor • Independent variables, quantitative or qualitative, that are related to a response variable. • Examples • Indicated time for a transfusion • Cups of coffee • Type of coffee • Ad message • Ad medium
Levels • The intensity setting of a factor (i.e., the value assumed by a factor in an experiment) • Examples • Indicated time of transfusion • Slightly anemic, severely anemic • Amount of coffee • None, 2 cups, 4 cups • Type of coffee • Regular, decaf coffee
Response • The variable measured in the experiment • Examples • Level of LDL, HDL after the coffee drinking experiment • Whether a patient lives or dies • Brand recognition following an ad experiment • Number of defects per chip
Co-variate • A quantitative, independent variable observed in addition to the response in an experiment • Examples • Level of LDL, HDL before the coffee drinking experiment • Height of a manufacturing worker in a training program • Average yield of corn from a particular plot
Replication • The repeating of an entire experiment in a slightly different setting • Examples • Blood transfusions on a surgical wing • Coffee drinking among women • Ad campaigns in different countries • Manufacturing systems in different plants • Issues of homogeneous experimental units
Experimental units • The object upon which the response Y is measured • Examples • Coffee drinking man • Critically ill patient with anemia • An experiment can have “runs” rather than experimental units • Production run of manufacturing system • Batch of brownies
Repeat tests • Multiple observation of the response for a particular treatment, I.e. factor level combination • Examples • Twenty repeat tests were conducted for each coffee treatment • 418 repeat tests were conducted for the restricted transfusion treatment
Principles of Experimentation • Blocking - to remove extraneous variation • Completeness - to give balance and improve accuracy of error measurements • Randomization - to satisfy independence of error observations, to decrease likelihood of systematic bias, to improve validity of casual inferences
Designs are differentiated by the way randomization occurs • Completely randomized • Complete randomized block • Factorial • Incomplete randomized block • Latin Square • Split plot • Fractional factorial
Completely randomized • Treatments are randomly assigned to experimental units • Runs are randomly sequenced
Complete randomized block • Treatments are randomly assigned within blocks • Runs are randomly sequenced within blocks
Factorial • Definition-a factorial design is one that has all factor level combinations • Example • 3x4 factorial design has two factors, • one with 3 levels; one with 4 levels; and • 12 treatments • Treatments are randomly assigned to experimental units
Incomplete randomized block • Each block contains only a subset of all possible treatments • BIB - balanced incomplete block design Each pair of treatments appears together the same number of times • A particular BIB is randomly selected
Latin Square Design • A special BIB where 3 factors can be observed, each with k levels • Particular Latin Squares are randomly selected
Split plot design • Two factors - assigned to different kinds of experimental units • Examples • Seeds types are randomly assigned to fields, but insecticides are randomly assigned to farms • Machine B settings are changed in a random sequence for all of one manufacturing substance Manufacturing substance is also randomly sequenced
Fractional factorial • A particular “fraction” of the complete (factorial) set of treatments is randomly selected • Fractional factorial designs are precursors of Taguchi designs
Advantages of experiments • Casual inferences can be approached • Extraneous variation can be removed • Replication can extend generality
Disadvantages of experiments • For ethical and economic reasons, some variables cannot be manipulated • Experimental settings are sometimes only crude approximations of reality • Decision making outcomes of university students in an experiment with Executive Decision Support systems