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5 - Regional models of CFA: applications and examples

from Part II - Applications and strategies of CFA

Published online by Cambridge University Press:  04 August 2010

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Summary

The last chapter discussed global CFA models. These models assign every variable the same status. For instance, first order CFA considers the main effects of all variables, and second order CFA considers all pairwise associations rather than a subset of them. Regional CFA models define groups of variables. Variables belonging to the same group may interact. Variables belonging to different groups are assumed to be independent from each other. If these assumptions are violated, types and antitypes indicate local relationships between the groups. The present chapter introduces the following regional models of CFA: interaction structure analysis (ISA; Krauth and Lienert 1974), d-sample CFA (Lienert 1971c), prediction CFA (PCFA; Lienert and Krauth 1973a), conditional CFA (Lienert 1978; Krauth 1980a), and CFA of directed relations (DCFA; von Eye 1985).

Interaction structure analysis

Most approaches to the analysis of relationships among several categorical variables define one interaction term for each group of three or more variables. For instance, information theory defines an interaction as “a unique dependency from which all relations of a lower ordinality are removed.” (Krippendorff 1986, p. 37; cf. von Eye 1985). However, in many instances, special concepts are necessary to meet with substantive assumptions. An example of such a concept is Krauth and Lienert's (1973a) definition of higher order interactions.

Higher order interactions can be defined only if there are at least three variables. For two variables, interactions coincide with simple associations that can be measured with, for example, chi-square coefficients. Krauth and Lienert consider a higher order interaction as the relationship between any two nonempty, nonoverlapping sets of variables.

Type
Chapter
Information
Introduction to Configural Frequency Analysis
The Search for Types and Antitypes in Cross-Classification
, pp. 82 - 142
Publisher: Cambridge University Press
Print publication year: 1990

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