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Predicting a Distal Outcome Variable From a Latent Growth Model: ML versus Bayesian Estimation

机译:从潜伏的生长模型预测远端结果变量:ML与贝叶斯估计

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Latent growth models (LGMs) with a distal outcome allow researchers to assess longer-term patterns, and to detect the need to start a (preventive) treatment or intervention in an early stage. The aim of the current simulation study is to examine the performance of an LGM with a continuous distal outcome under maximum likelihood (ML) and Bayesian estimation with default and informative priors, under varying sample sizes, effect sizes and slope variance values. We conclude that caution is needed when predicting a distal outcome from an LGM when the: (1) sample size is small; and (2) amount of variation around the latent slope is small, even with a large sample size. We recommend against the use of ML and Bayesian estimation with Mplus default priors in these situations to avoid severely biased estimates. Recommendations for substantive researchers working with LGMs with distal outcomes are provided based on the simulation results.
机译:潜伏的增长模型(LGMS)具有远端结果允许研究人员评估长期模式,并检测开始在早期阶段的(预防)治疗或干预的需要。目前仿真研究的目的是在不同的样本尺寸,效果大小和斜率方差值下,以最大可能性(ml)和跳频估计,在最大可能性(ml)和贝叶斯估计下,检查LGM的性能。我们得出结论,当预测来自LGM的远端结果时,需要注意:(1)样本大小小; (2)潜伏斜率周围的变化量很小,即使具有大的样本尺寸。我们建议使用ML和Bayesian估计与这些情况下的Mplus默认前瞻性,以避免严重偏见的估计。根据模拟结果提供使用LGM的实质研究人员的建议,是基于模拟结果。

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