Missing data are ubiquitous in psychological research. They may come about as an unwanted result of coding or computer error, participants' non-response or absence, or missing values may be intentional, as in planned missing designs. We discuss the effects of missing data on χ²-based goodness-of-fit indices in Structural Equation Modeling (SEM), specifically on the Root Mean Squared Error of Approximation (RMSEA). We use simulations to show that naive implementations of the RMSEA have a downward bias in the presence of missing data and, thus, overestimate model goodness-of-fit. Unfortunately, many state-of-the-art software packages report the biased form of RMSEA. As a consequence, the scientific community may have been accepting a much lar...
Structural equation models (SEM), or confirmatory factor analysis as a special case, contain model p...
Structural equation modelling has become widespread in the marketing research domain due to the poss...
At small sample sizes or when the model is complex, the chi-square test of model fit is known to ove...
Missing data is a frequent occurrence in both small and large datasets. Among other things, missingn...
The full-information maximum likelihood (FIML) is a popular estimation method for missing data in st...
Assessing the correctness of a structural equation model is essential to avoid drawing incorrect con...
Missing data is a problem that permeates much of the research being done today. Traditional techniqu...
This article is an empirical evaluation of the choice of fixed cutoff points in assessing the root m...
Missing data is a problem that permeates much of the research being done today. Traditional techniqu...
Statistical power is an important concept for psychological research. However, examining the power o...
Missing data can lead to bias and inefficiency in estimating the quantities of interest in scientifi...
dardized root mean squared residual (SRMR) was the most sensitive to misspecified factor covariances...
Modern missing data techniques, such as full information maximum likelihood (FIML) and multiple impu...
A Monte Carlo simulation examined the performance of 4 missing data methods in structural equation m...
A Monte Carlo study was conducted to assess the effects of some potential confounding factors on str...
Structural equation models (SEM), or confirmatory factor analysis as a special case, contain model p...
Structural equation modelling has become widespread in the marketing research domain due to the poss...
At small sample sizes or when the model is complex, the chi-square test of model fit is known to ove...
Missing data is a frequent occurrence in both small and large datasets. Among other things, missingn...
The full-information maximum likelihood (FIML) is a popular estimation method for missing data in st...
Assessing the correctness of a structural equation model is essential to avoid drawing incorrect con...
Missing data is a problem that permeates much of the research being done today. Traditional techniqu...
This article is an empirical evaluation of the choice of fixed cutoff points in assessing the root m...
Missing data is a problem that permeates much of the research being done today. Traditional techniqu...
Statistical power is an important concept for psychological research. However, examining the power o...
Missing data can lead to bias and inefficiency in estimating the quantities of interest in scientifi...
dardized root mean squared residual (SRMR) was the most sensitive to misspecified factor covariances...
Modern missing data techniques, such as full information maximum likelihood (FIML) and multiple impu...
A Monte Carlo simulation examined the performance of 4 missing data methods in structural equation m...
A Monte Carlo study was conducted to assess the effects of some potential confounding factors on str...
Structural equation models (SEM), or confirmatory factor analysis as a special case, contain model p...
Structural equation modelling has become widespread in the marketing research domain due to the poss...
At small sample sizes or when the model is complex, the chi-square test of model fit is known to ove...