An Estimating Equations Approach for the LISCOMP Model
- 1 June 1998
- journal article
- Published by Cambridge University Press (CUP) in Psychometrika
- Vol. 63 (2) , 165-182
- https://doi.org/10.1007/bf02294773
Abstract
Maximum likelihood estimation is computationally infeasible for latent variable models involving multivariate categorical responses, in particular for the LISCOMP model. A three-stage generalized least squares approach introduced by Muthén (1983, 1984) can experience problems of instability, bias, non-convergence, and non-positive definiteness of weight matrices in situations of low prevalence, small sample size and large numbers of observed indicator variables. We propose a quadratic estimating equations approach that only requires specification of the first two moments. By performing simultaneous estimation of parameters, this method does not encounter the problems mentioned above and experiences gains in efficiency. Methods are compared through a numerical study and an application to a study of life-events and neurotic illness.Keywords
This publication has 17 references indexed in Scilit:
- A two‐stage estimation of structural equation models with continuous and polytomous variablesBritish Journal of Mathematical and Statistical Psychology, 1995
- Approximate likelihood ratios for general estimating functionsBiometrika, 1995
- Inference Based on Estimating Functions in the Presence of Nuisance ParametersStatistical Science, 1995
- On the Estimation of Polychoric Correlations and their Asymptotic Covariance MatrixPsychometrika, 1994
- New developments in LISREL: analysis of ordinal variables using polychoric correlations and weighted least squaresQuality & Quantity, 1990
- A Three-Stage Estimation Procedure for Structural Equation Models with Polytomous VariablesPsychometrika, 1990
- Two-step estimation of multivariate polychoric correlationCommunications in Statistics - Theory and Methods, 1987
- Longitudinal data analysis using generalized linear modelsBiometrika, 1986
- Contributions to Factor Analysis of Dichotomous VariablesPsychometrika, 1978
- Factor Analysis of Dichotomized VariablesPsychometrika, 1975