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The Effect of Model Misspecification on Growth Mixture Model Class Enumeration

机译:模型误操作对生长混合模型枚举的影响

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Multiple criteria have been proposed to aid in deciding how many latent classes to extract in growth mixture models; however, studies are just beginning to investigate the performance of these criteria under non-ideal conditions. We review these previous studies and conduct a simulation study to address the performance of fit criteria under two previously uninvestigated assumption violations: (1) linearity of covariates and (2) proper specification of the growth factor covariance matrix. Results show that, provided that estimation is carried out with a large number of random starts and final stage optimizations, BIC and the bootstrap likelihood ratio test perform exceedingly well at identifying whether the data are homogenous or whether latent classes may be present, even with misspecifications present. Results were far less favorable when software default estimation choices were selected. We discuss implications to empirical studies and speculate on the relation between estimation choices and fit criteria perform.
机译:已经提出了多个标准,以帮助决定在生长混合模型中提取多少潜在阶段;然而,研究刚刚开始在非理想条件下调查这些标准的性能。我们审查了以前的研究,并进行了模拟研究,以解决符合前两次未投虫的假设违规的拟合标准的性能:(1)协变量的线性和(2)对生长因子协方差矩阵的适当规范。结果表明,只要使用大量随机开始和最终阶段优化执行估计,BIC和Bootstrap似然比测试在识别数据是均匀的或是否可能存在潜在类,即使有误操作展示。结果在选择软件默认估计选择时,结果远不太优惠。我们讨论对实证研究的影响,并推测估算选择与拟合标准之间的关系。

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