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A New Analysis Strategy for Designs With Complex Aliasing

Andrew Kane and Abhyuday Mandal

The American Statistician, 2020, vol. 74, issue 3, 274-281

Abstract: Nonregular designs are popular in planning industrial experiments for their run-size economy. These designs often produce partially aliased effects, where the effects of different factors cannot be completely separated from each other. In this article, we propose applying an adaptive lasso regression as an analytical tool for designs with complex aliasing. Its utility compared to traditional methods is demonstrated by analyzing real-life experimental data and simulation studies.

Date: 2020
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DOI: 10.1080/00031305.2019.1585287

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