Conducting Monte Carlo simulations with PLS-PM and other variance-based estimators for structural equation models: a tutorial using the R package cSEM

Tamara Schamberger
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Abstract

PurposeStructural equation modeling (SEM) is a well-established and frequently applied method in various disciplines. New methods in the context of SEM are being introduced in an ongoing manner. Since formal proof of statistical properties is difficult or impossible, new methods are frequently justified using Monte Carlo simulations. For SEM with covariance-based estimators, several tools are available to perform Monte Carlo simulations. Moreover, several guidelines on how to conduct a Monte Carlo simulation for SEM with these tools have been introduced. In contrast, software to estimate structural equation models with variance-based estimators such as partial least squares path modeling (PLS-PM) is limited.Design/methodology/approachAs a remedy, the R package cSEM which allows researchers to estimate structural equation models and to perform Monte Carlo simulations for SEM with variance-based estimators has been introduced. This manuscript provides guidelines on how to conduct a Monte Carlo simulation for SEM with variance-based estimators using the R packages cSEM and cSEM.DGP.FindingsThe author introduces and recommends a six-step procedure to be followed in conducting each Monte Carlo simulation.Originality/valueFor each of the steps, common design patterns are given. Moreover, these guidelines are illustrated by an example Monte Carlo simulation with ready-to-use R code showing that PLS-PM needs the constructs to be embedded in a nomological net to yield valuable results.
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使用PLS-PM和其他基于方差的结构方程模型估计器进行蒙特卡罗模拟:使用R包cSEM的教程
目的结构方程建模(SEM)是一种成熟且经常应用于各个学科的方法。在扫描电镜的背景下,新的方法正在不断地被引入。由于统计性质的正式证明是困难的或不可能的,新方法经常使用蒙特卡罗模拟来证明。对于基于协方差估计器的SEM,有几种工具可用于执行蒙特卡罗模拟。此外,还介绍了如何使用这些工具对SEM进行蒙特卡罗模拟的几个指导方针。相比之下,用偏最小二乘路径建模(PLS-PM)等基于方差的估计器估计结构方程模型的软件是有限的。设计/方法/方法有一种补救措施,R包cSEM,它允许研究人员估计结构方程模型,并使用基于方差的估计器对SEM进行蒙特卡罗模拟。本文提供了关于如何使用R包cSEM和cSEM. dgp .发现作者介绍并建议在进行每个蒙特卡罗模拟时要遵循的六步程序。原创性/价值对于每个步骤,给出了常见的设计模式。此外,这些指导原则通过一个示例蒙特卡罗模拟与现成的R代码来说明,表明PLS-PM需要将结构嵌入到一个法则网络中以产生有价值的结果。
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