SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators and the performance of various fit indices under varying conditions of nonnormality. The efficacy of these Monte-Carlo simulations is closely related to the generation of non-normal data. Traditionally, SEM researchers have used approaches proposed by Fleishman (1978) and Vale and Maurelli (1983) to generate multivariate nonnormal random numbers. However, both approaches do not provide a method to determine univariate skewness and kurtosis of the observed variables when a non-normal distribution is specified for some or all of the latent variables. Mattson (1997) proposed a method for generating data on the latent variables with controlled skew...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
The accuracy of alternative estimation methods (i.e., ML, GLS, and WLS) in structural equation model...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
This is the accepted, refereed and final manuscript to the article publishedWe present and investiga...
Many inferential statistical tests require that the observed variables have a normal distribution. M...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
We present PLSIM, a new method for generating nonnormal data with a pre-specified covariance matrix ...
Simulation techniques must be able to generate the types of distributions most commonly encountered ...
Simulation techniques must be able to generate the types of distributions most commonly encountered ...
Because the assumption of normality is common in statistics, the robustness of statistical procedure...
Fleishman's power method is one of the traditional methods used for generatingnon-normal random numb...
A Monte Carlo study was conducted to assess the effects of some potential confounding factors on str...
The two common approaches to Structural Equation Modeling (SEM) are the Covariance-Based SEM (CB-SEM...
Monte Carlo simulations have become the workhorse of the modern methodologist aimed at providing bot...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
The accuracy of alternative estimation methods (i.e., ML, GLS, and WLS) in structural equation model...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
This is the accepted, refereed and final manuscript to the article publishedWe present and investiga...
Many inferential statistical tests require that the observed variables have a normal distribution. M...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
We present PLSIM, a new method for generating nonnormal data with a pre-specified covariance matrix ...
Simulation techniques must be able to generate the types of distributions most commonly encountered ...
Simulation techniques must be able to generate the types of distributions most commonly encountered ...
Because the assumption of normality is common in statistics, the robustness of statistical procedure...
Fleishman's power method is one of the traditional methods used for generatingnon-normal random numb...
A Monte Carlo study was conducted to assess the effects of some potential confounding factors on str...
The two common approaches to Structural Equation Modeling (SEM) are the Covariance-Based SEM (CB-SEM...
Monte Carlo simulations have become the workhorse of the modern methodologist aimed at providing bot...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
The accuracy of alternative estimation methods (i.e., ML, GLS, and WLS) in structural equation model...