Isomorphism Check for Two-level Multi-Stage Factorial Designs with Randomization Restrictions via an R Package: IsoCheck

Pratishtha Batra, Neil Spencer, Pritam Ranjan
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Abstract

Factorial designs are often used in various industrial and sociological experiments to identify significant factors and factor combinations that may affect the process re- sponse. In the statistics literature, several studies have investigated the analysis, con- struction, and isomorphism of factorial and fractional factorial designs. When there are multiple choices for a design, it is helpful to have an easy-to-use tool for identifying which are distinct, and which of those can be efficiently analyzed/has good theoretical properties. For this task, we present an R library called IsoCheck that checks the isomorphism of multi-stage 26n factorial experiments with randomization restrictions. Through representing the factors and their combinations as a finite projective geometry, IsoCheck recasts the problem of searching over all possible relabelings as a search over collineations, then exploits projective geometric properties of the space to make the search much more efficient. Furthermore, a bitstring representation of the factorial effects is used to characterize all possible rearrangements of designs, thus facilitating quick comparisons after relabeling. This paper presents several detailed examples with R codes that illustrate the usage of the main functions in IsoCheck. Besides checking equivalence and isomorphism of 2^n multi-stage factorial designs, we demonstrate how the functions of the package can be used to create a catalog of all non-isomorphic designs, and good designs as per a suitably defined ranking criterion.
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基于R包的具有随机化限制的两水平多阶段析因设计的同构检验:IsoCheck
析因设计常用于各种工业和社会学实验中,以确定可能影响过程反应的重要因素和因素组合。在统计文献中,一些研究调查了析因和分数析因设计的分析、构造和同构性。当设计有多种选择时,有一个易于使用的工具来识别哪些是不同的,哪些可以有效地分析/具有良好的理论属性是很有帮助的。对于这项任务,我们提出了一个名为IsoCheck的R库,用于检查具有随机化限制的多阶段26n析因实验的同构性。通过将因子及其组合表示为有限射影几何,IsoCheck将搜索所有可能重新标记的问题转换为对共线的搜索,然后利用空间的射影几何特性使搜索更加高效。此外,阶乘效应的位串表示用于描述所有可能的设计重排,从而促进重新标记后的快速比较。本文用R代码给出了几个详细的例子,说明了IsoCheck中主要函数的用法。除了检查2^n多阶段析因设计的等价性和同构性外,我们还演示了如何使用包的功能来创建所有非同构设计的目录,以及根据适当定义的排序标准的好设计。
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