In this note we show that for some structural equation models (SEM), the classical chi-square goodness-of-fit test is unable to detect the presence of interaction (non-linear) terms in the model. Not only the model test has zero power against that type of misspecifications, but even the theoretical (chi-square) distribution of the test is not distorted when severe interaction term misspecification is present in the postulated model. We explain this phenomenon by exploiting results on asymptotic robustness (AR) in structural equation models. The importance of this paper is to warn against the conclusion that if a proposed linear model fits the data well according to the chi-quare goodness-of-fit test, then the underlying model is linear inde...
In this article we describe a modification of the robust chi-square test of fit that yields more acc...
The issue of sensitivity of the structural equation modeling (SEM) methodology to violations of the ...
Cragg and Donald (1996) have pointed out that the asymptotic size of tests for overidentifying restr...
In this note we show that for some structural equation models (SEM), the classical chi-square goodne...
Item does not contain fulltextAssessing the correctness of a structural equation model is essential ...
At small sample sizes or when the model is complex, the chi-square test of model fit is known to ove...
Evaluating model fit in nonlinear multilevel structural equation models (MSEM) presents a challenge ...
Yet another paper on fit measures? To our knowledge, very few papers discuss how fit measures are af...
Various chi-square statistics are used for testing structural equation models. A commonly used chi-s...
A Monte Carlo simulation was conducted to investigate the Type I error rates of several versions of ...
In causal inference, all methods of model learning rely on testable implications, namely, properties...
In their article, Yuan and Deng argue that a structural parameter under partial least squares struct...
Since the seminal paper of Kenny and Judd (1984) several methods have been proposed for dealing with...
A Monte Carlo simulation study was conducted to investigate Type I error rates and power of several ...
A family of scaling corrections aimed to improve the chi-square approximation of goodness-of-fit te...
In this article we describe a modification of the robust chi-square test of fit that yields more acc...
The issue of sensitivity of the structural equation modeling (SEM) methodology to violations of the ...
Cragg and Donald (1996) have pointed out that the asymptotic size of tests for overidentifying restr...
In this note we show that for some structural equation models (SEM), the classical chi-square goodne...
Item does not contain fulltextAssessing the correctness of a structural equation model is essential ...
At small sample sizes or when the model is complex, the chi-square test of model fit is known to ove...
Evaluating model fit in nonlinear multilevel structural equation models (MSEM) presents a challenge ...
Yet another paper on fit measures? To our knowledge, very few papers discuss how fit measures are af...
Various chi-square statistics are used for testing structural equation models. A commonly used chi-s...
A Monte Carlo simulation was conducted to investigate the Type I error rates of several versions of ...
In causal inference, all methods of model learning rely on testable implications, namely, properties...
In their article, Yuan and Deng argue that a structural parameter under partial least squares struct...
Since the seminal paper of Kenny and Judd (1984) several methods have been proposed for dealing with...
A Monte Carlo simulation study was conducted to investigate Type I error rates and power of several ...
A family of scaling corrections aimed to improve the chi-square approximation of goodness-of-fit te...
In this article we describe a modification of the robust chi-square test of fit that yields more acc...
The issue of sensitivity of the structural equation modeling (SEM) methodology to violations of the ...
Cragg and Donald (1996) have pointed out that the asymptotic size of tests for overidentifying restr...