Estimation of Covariance Structure Models with Parameters Subject to Functional Restraints
- 1 September 1980
- journal article
- Published by Cambridge University Press (CUP) in Psychometrika
- Vol. 45 (3) , 309-324
- https://doi.org/10.1007/bf02293906
Abstract
This paper demonstrates the feasibility of using the penalty function method to estimate parameters that are subject to a set of functional constraints in covariance structure analysis. Both types of inequality and equality constraints are studied. The approaches of maximum likelihood and generalized least squares estimation are considered. A modified Scoring algorithm and a modified Gauss-Newton algorithm are implemented to produce the appropriate constrained estimates. The methodology is illustrated by its applications to Heywood cases in confirmatory factor analysis, quasi-Weiner simplex model, and multitrait-multimethod matrix analysis.Keywords
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