CHAPTER 5 EXAMPLES: CONFIRMATORY FACTOR …
CHAPTER 5 56 and a set of Poisson or zero-inflated Poisson regression equations for count factor indicators. The structural model describes three types of relationships in one set of multivariate regression equations: the relationships among factors, the relationships among observed variables, and the relationships between
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