Publication | Open Access
A mixed integer optimization approach for model selection in screening experiments
13
Citations
30
References
2020
Year
EngineeringField ExperimentOptimal Experimental DesignQuasi-experimentEffect HeredityBiostatisticsPublic HealthStatisticsStatistical MethodsDesignModel ComparisonFunctional Data AnalysisInteger ProgrammingModel OptimizationExperiment DesignOptimization ProblemMixed Integer OptimizationScreening DesignStatistical InferenceInteraction Effect
After completing the experimental runs of a screening design, the responses under study are analyzed by statistical methods to detect the active effects. To increase the chances of correctly identifying these effects, a good analysis method should provide alternative interpretations of the data, reveal the aliasing present in the design, and search only meaningful sets of effects as defined by user-specified restrictions such as effect heredity. This article presents a mixed integer optimization strategy to analyze data from screening designs that possesses all these properties. We illustrate our method by analyzing data from real and synthetic experiments, and using simulations.
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