Sure independence screening for analyzing supersaturated designs

Supersaturated designs (SSDs) constitute a large class of fractional factorial designs which can be used for screening out the important factors from a large set of potentially active ones. A major advantage of these designs is that they reduce the experimental cost dramatically, but their crucial d...

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Bibliographic Details
Published inCommunications in statistics. Simulation and computation Vol. 48; no. 7; pp. 1979 - 1995
Main Authors Drosou, K., Koukouvinos, C.
Format Journal Article
LanguageEnglish
Published Philadelphia Taylor & Francis 09.08.2019
Taylor & Francis Ltd
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ISSN0361-0918
1532-4141
DOI10.1080/03610918.2018.1429620

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Summary:Supersaturated designs (SSDs) constitute a large class of fractional factorial designs which can be used for screening out the important factors from a large set of potentially active ones. A major advantage of these designs is that they reduce the experimental cost dramatically, but their crucial disadvantage is the confounding involved in the statistical analysis. Identification of active effects in SSDs has been the subject of much recent study. In this article we present a two-stage procedure for analyzing two-level SSDs assuming a main-effect only model, without including any interaction terms. This method combines sure independence screening (SIS) with different penalty functions; such as Smoothly Clipped Absolute Deviation (SCAD), Lasso and MC penalty achieving both the down-selection and the estimation of the significant effects, simultaneously. Insights on using the proposed methodology are provided through various simulation scenarios and several comparisons with existing approaches, such as stepwise in combination with SCAD and Dantzig Selector (DS) are presented as well. Results of the numerical study and real data analysis reveal that the proposed procedure can be considered as an advantageous tool due to its extremely good performance for identifying active factors.
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ISSN:0361-0918
1532-4141
DOI:10.1080/03610918.2018.1429620