The noncentral chi-square approximation of the distribution of the likelihood ratio (LR) test statistic is a critical part of the methodology in structural equations modeling (SEM). Recently, it was argued by some authors that in certain situations normal distributions may give a better approximation of the distribution of the LR test statistic. The main goal of this paper is to evaluate the validity of employing these distributions in practice. Monte Carlo simulation results indicate that the noncentral chi-square distribution describes behavior of the LR test statistic well under small, moderate and even severe misspecifications regardless of the sample size (as long as it is sufficiently large), while the normal distribution, with a bias...
A Monte Carlo simulation was conducted to investigate the Type I error rates of several versions of ...
According to Kenny and McCoach (2003), chi-square tests of structural equation models produce inflat...
In this note we show that for some structural equation models (SEM), the classical chi-square goodne...
The noncentral chi-square approximation of the distribution of the likelihood ratio (LR) test statis...
AbstractThe normal distribution based likelihood ratio (LR) statistic is widely used in structural e...
In this paper, we prove a local limit theorem for the chi-square distribution with $r > 0$ degrees o...
The chi-square distribution is often assumed to hold for the asymptotic distribution of two times th...
Limiting distribution of likelihood ratio statistic under class of local alternatives and minimum av...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
The distribution of the X2 test under the null hypothesis is studied, when the parameters are estima...
A family of scaling corrections aimed to improve the chi-square approximation of goodness-of-fit tes...
A simple and novel asymptotic bound for the maximum error resulting from the use of the central limi...
This paper extends the Pearson chi-square testing method to non-dynamic parametric econometric model...
A Monte Carlo simulation study was conducted to investigate Type I error rates and power of several ...
This paper examines asymptotic distributions of the likelihood ratio criteria, which are proposed un...
A Monte Carlo simulation was conducted to investigate the Type I error rates of several versions of ...
According to Kenny and McCoach (2003), chi-square tests of structural equation models produce inflat...
In this note we show that for some structural equation models (SEM), the classical chi-square goodne...
The noncentral chi-square approximation of the distribution of the likelihood ratio (LR) test statis...
AbstractThe normal distribution based likelihood ratio (LR) statistic is widely used in structural e...
In this paper, we prove a local limit theorem for the chi-square distribution with $r > 0$ degrees o...
The chi-square distribution is often assumed to hold for the asymptotic distribution of two times th...
Limiting distribution of likelihood ratio statistic under class of local alternatives and minimum av...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
The distribution of the X2 test under the null hypothesis is studied, when the parameters are estima...
A family of scaling corrections aimed to improve the chi-square approximation of goodness-of-fit tes...
A simple and novel asymptotic bound for the maximum error resulting from the use of the central limi...
This paper extends the Pearson chi-square testing method to non-dynamic parametric econometric model...
A Monte Carlo simulation study was conducted to investigate Type I error rates and power of several ...
This paper examines asymptotic distributions of the likelihood ratio criteria, which are proposed un...
A Monte Carlo simulation was conducted to investigate the Type I error rates of several versions of ...
According to Kenny and McCoach (2003), chi-square tests of structural equation models produce inflat...
In this note we show that for some structural equation models (SEM), the classical chi-square goodne...