To model data from multi-item scales, many researchers default to a confirmatory factor analysis (CFA) approach that restricts cross-loadings and residual correlations to zero. This often leads to problems of measurement-model misfit while also ignoring theoretically relevant alternatives. Existing research mostly offers solutions by relaxing assumptions about cross-loadings and allowing residual correlations. However, such approaches are critiqued as being weak on theory and/or indicative of problematic measurement scales. We offer a theoretically-grounded alternative to modeling survey data called an autoregressive confirmatory factor analysis (AR-CFA), which is motivated by recognizing that responding to survey items is a sequential process that may create temporal dependencies among scale items. We compare an AR-CFA to other common approaches using a sample of 8,569 people measured along five common personality factors, showing how the AR-CFA can improve model fit and offer evidence of increased construct validity. We then introduce methods for testing AR-CFA hypotheses, including cross-level moderation effects using latent interactions among stable factors and time-varying residuals. We recommend considering the AR-CFA as a useful complement to other existing approaches and treat AR-CFA limitations.
Modeling Measurement as a Sequential Process: Autoregressive Confirmatory Factor Analysis (AR-CFA).
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作者:Ozkok Ozlem, Zyphur Michael J, Barsky Adam P, Theilacker Max, Donnellan M Brent, Oswald Frederick L
| 期刊: | Frontiers in Psychology | 影响因子: | 2.900 |
| 时间: | 2019 | 起止号: | 2019 Sep 20; 10:2108 |
| doi: | 10.3389/fpsyg.2019.02108 | ||
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