Markov Network Analysis: suggestions for innovations in covariance structure analysis.
Studies of aging offer special methodological challenges to the researcher in that he must often examine the change of multiple correlated variables over time. We present a set of procedures that are specifically designed to model change in such multivariate situations. These procedures, which we will call Markov Network Analysis, are directly applicable to modeling change from longitudinal or serial data. In such cases, the parameters of the model have dynamic interpretations, e.g., as coefficients in positive or negative feedback loops. In cross-sectional data, one cannot directly estimate the dynamic coefficients but the model does show how certain dynamic interpretations can be made. Statistically, maximum likelihood estimation procedures are developed and presented. In the development of the statistical model, it is shown how the bias of sequential hypothesis testing, a frequent occurrence in the estimation of complex covariance structure models, may be reduced.
Duke Scholars
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Related Subject Headings
- Time Factors
- Humans
- Experimental Psychology
- Cross-Sectional Studies
- Analysis of Variance
- Age Factors
- 5204 Cognitive and computational psychology
- 5203 Clinical and health psychology
- 5202 Biological psychology
- 1701 Psychology
Citation
Published In
DOI
ISSN
Publication Date
Volume
Issue
Start / End Page
Location
Related Subject Headings
- Time Factors
- Humans
- Experimental Psychology
- Cross-Sectional Studies
- Analysis of Variance
- Age Factors
- 5204 Cognitive and computational psychology
- 5203 Clinical and health psychology
- 5202 Biological psychology
- 1701 Psychology