A popular model in structural equation modeling involves a multivariate normal density with a structured covariance matrix that has been categorized according to a set of thresholds. In this setup one may estimate the covariance structure parameters from the sample tetrachoricl polychoric correlations but only if the covariance structure is scale invariant. Doing so when the covariance structure is not scale invariant results in estimating a more restricted covariance structure than the one intended. When the covariance structure is not scale invariant, then the model parameters must be estimated jointly from the sample thresholds and tetrachoricl polychoric correlations. In general, when fitting a covariance structure from a sample correla...
Correlated parameters are often expected when modeling a natural system. However, correlation among...
This thesis focuses on the problem of estimating parameters in multivariate linear models where part...
The method of generalised estimating equations for regression modelling of clustered outcomes allows...
A popular model in structural equation modeling involves a multivariate normal density with a struct...
Covariance structure modeling, also known as structural equation modeling or causal modeling, appear...
factor analysis, structural models ABSTRACT. This paper provides methods for the estimation of covar...
Covariance structure models frequently contain out-of-range estimates that make no sense from eith...
The issue of identification of covariance structures, which arises in a number of different contexts...
The vast majority of structural equation models contain no mean structure, that is, the population m...
Correlated parameters are often expected when modeling a natural system. However, correlation among ...
Thesis (Ph.D.)--University of Washington, 2013We present results for testing and estimation in the c...
This thesis investigates the robustness of estimation methods in covariance structure analysis (CSA)...
The coefficient of variation (CV) measures variability relative to the mean, and can be useful when ...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
Covariance matrices of random vectors contain information that is crucial for modelling. Certain str...
Correlated parameters are often expected when modeling a natural system. However, correlation among...
This thesis focuses on the problem of estimating parameters in multivariate linear models where part...
The method of generalised estimating equations for regression modelling of clustered outcomes allows...
A popular model in structural equation modeling involves a multivariate normal density with a struct...
Covariance structure modeling, also known as structural equation modeling or causal modeling, appear...
factor analysis, structural models ABSTRACT. This paper provides methods for the estimation of covar...
Covariance structure models frequently contain out-of-range estimates that make no sense from eith...
The issue of identification of covariance structures, which arises in a number of different contexts...
The vast majority of structural equation models contain no mean structure, that is, the population m...
Correlated parameters are often expected when modeling a natural system. However, correlation among ...
Thesis (Ph.D.)--University of Washington, 2013We present results for testing and estimation in the c...
This thesis investigates the robustness of estimation methods in covariance structure analysis (CSA)...
The coefficient of variation (CV) measures variability relative to the mean, and can be useful when ...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
Covariance matrices of random vectors contain information that is crucial for modelling. Certain str...
Correlated parameters are often expected when modeling a natural system. However, correlation among...
This thesis focuses on the problem of estimating parameters in multivariate linear models where part...
The method of generalised estimating equations for regression modelling of clustered outcomes allows...