TY - JOUR
T1 - Triangulating on Developmental Models With a Combination of Experimental and Nonexperimental Estimates
AU - Wan, Sirui
AU - Brick, Timothy R.
AU - Alvarez-Vargas, Daniela
AU - Bailey, Drew H.
N1 - Publisher Copyright:
© 2022 American Psychological Association
PY - 2022/11/17
Y1 - 2022/11/17
N2 - Plausible competing developmental models show similar or identical structural equation modeling model fit indices, despite making very different causal predictions. One way to help address this problem is incorporating outside information into selecting among models. This study attempted to select among developmental models of children’s early mathematical skills by incorporating information about the extent to which models forecast the longitudinal pattern of causal impacts of early math interventions. We tested for the usefulness and validity of the approach by applying it to data from three randomized controlled trials of early math interventions with longitudinal follow-up assessments in the United States (Ns = 1,375, 591, 744; baseline age 4.3, 6.5, 4.4; 17%–69% Black). We found that, across data sets, (a) some models consistently outperformed other models at forecasting later experimental impacts, (b) traditional statistical fit indices were not strongly related to causal fit as indexed by models’ accuracy at forecasting later experimental impacts, and (c) models showed consistent patterns of similarity and discrepancy between statistical fit and models’ effectiveness at forecasting experimental impacts.
AB - Plausible competing developmental models show similar or identical structural equation modeling model fit indices, despite making very different causal predictions. One way to help address this problem is incorporating outside information into selecting among models. This study attempted to select among developmental models of children’s early mathematical skills by incorporating information about the extent to which models forecast the longitudinal pattern of causal impacts of early math interventions. We tested for the usefulness and validity of the approach by applying it to data from three randomized controlled trials of early math interventions with longitudinal follow-up assessments in the United States (Ns = 1,375, 591, 744; baseline age 4.3, 6.5, 4.4; 17%–69% Black). We found that, across data sets, (a) some models consistently outperformed other models at forecasting later experimental impacts, (b) traditional statistical fit indices were not strongly related to causal fit as indexed by models’ accuracy at forecasting later experimental impacts, and (c) models showed consistent patterns of similarity and discrepancy between statistical fit and models’ effectiveness at forecasting experimental impacts.
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U2 - 10.1037/dev0001490
DO - 10.1037/dev0001490
M3 - Article
C2 - 36395046
AN - SCOPUS:85145854081
SN - 0012-1649
VL - 59
SP - 216
EP - 228
JO - Developmental psychology
JF - Developmental psychology
IS - 2
ER -