On the solution multiplicity of the Fleishman method and its impact in simulation studies.

Oscar L Olvera Astivia, Bruno D Zumbo
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引用次数: 5

Abstract

The Fleishman third-order polynomial algorithm is one of the most-often used non-normal data-generating methods in Monte Carlo simulations. At the crux of the Fleishman method is the solution of a non-linear system of equations needed to obtain the constants to transform data from normality to non-normality. A rarely acknowledged fact in the literature is that the solution to this system is not unique, and it is currently unknown what influence the different types of solutions have on the computer-generated data. To address this issue, analytical and empirical investigations were conducted, aimed at documenting the impact that each solution type has on the design of computer simulations. In the first study, it was found that certain types of solutions generate data with different multivariate properties and wider coverage of the theoretical range spanned by population correlations. In the second study, it was found that previously published recommendations from Monte Carlo simulations could change if different types of solutions were used to generate the data. A mathematical description of the multiple solutions to the Fleishman polynomials is provided, as well as recommendations for users of this method.

Fleishman方法解的多重性及其在仿真研究中的影响。
Fleishman三阶多项式算法是蒙特卡罗模拟中最常用的非正态数据生成方法之一。Fleishman方法的关键是求解非线性方程组,以获得将数据从正态转换为非正态所需的常数。文献中很少承认的一个事实是,该系统的解决方案并不是唯一的,目前尚不清楚不同类型的解决方案对计算机生成的数据有什么影响。为了解决这个问题,进行了分析和实证调查,旨在记录每种解决方案类型对计算机模拟设计的影响。在第一项研究中,发现某些类型的解决方案产生具有不同多元属性的数据,并且在人口相关性所跨越的理论范围内覆盖范围更广。在第二项研究中,发现如果使用不同类型的解决方案来生成数据,以前发表的蒙特卡罗模拟建议可能会发生变化。给出了弗莱什曼多项式多重解的数学描述,并对该方法的使用者提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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