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Structural equation modeling by extended redundancy analysis

Posted on:2002-10-25Degree:Ph.DType:Dissertation
University:McGill University (Canada)Candidate:Hwang, HeungsunFull Text:PDF
GTID:1469390011495538Subject:Psychology
Abstract/Summary:
A new approach to structural equation modeling based on so-called extended redundancy analysis (ERA) is proposed. In ERA, latent variables are obtained as exact linear combinations of observed variables, and model parameters are estimated by consistently minimizing a single criterion. As a result, the method can avoid limitations of covariance structure analysis (e.g., stringent distributional assumptions, improper solutions, and factor score indeterminacy) in addition to those of partial least squares (e.g., the lack of a global optimization procedure). The method is simple yet versatile enough to fit more complex models; e.g., those with higher-order latent variables and direct effects of observed variables. It can also fit a model to more than one sample simultaneously. Other relevant topics are also discussed, including data transformations, missing data, metric matrices, robust estimation, and efficient estimation. Examples are given to illustrate the proposed method.
Keywords/Search Tags:Variables
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