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Fitting Latent Growth Models with Small Sample Sizes and Non-normal Missing Data.
Shi, Dexin; DiStefano, Christine; Zheng, Xiaying; Liu, Ren; Jiang, Zhehan.
Affiliation
  • Shi D; University of South Carolina, Columbia, SC, USA.
  • DiStefano C; University of South Carolina, Columbia, SC, USA.
  • Zheng X; American Institutes for Research, Washington, DC, USA.
  • Liu R; University of California, Merced, CA, USA.
  • Jiang Z; Institute of Medical Education & National Center for Health Professions Education Development, Peking University, Beijing, China.
Int J Behav Dev ; 45(2): 179-192, 2021 Mar.
Article in En | MEDLINE | ID: mdl-33664535
ABSTRACT
This study investigates the performance of robust ML estimators when fitting and evaluating small sample latent growth models (LGM) with non-normal missing data. Results showed that the robust ML methods could be used to account for non-normality even when the sample size is very small (e.g., N < 100). Among the robust ML estimators, "MLR" was the optimal choice, as it was found to be robust to both non-normality and missing data while also yielding more accurate standard error estimates and growth parameter coverage. However, the choice "MLMV" produced the most accurate p values for the Chi-square test statistic under conditions studied. Regarding the goodness of fit indices, as sample size decreased, all three fit indices studied (i.e., CFI, RMSEA, and SRMR) exhibited worse fit. When the sample size was very small (e.g., N < 60), the fit indices would imply that a proposed model fit poorly, when this might not be actually the case in the population.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Int J Behav Dev Year: 2021 Document type: Article Affiliation country:

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Int J Behav Dev Year: 2021 Document type: Article Affiliation country: