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A Comparison of Approaches for Estimating Covariate Effects in Nonparametric Multilevel Latent Class Models

机译:非参数多级潜在类模型中协变量效应估计方法的比较

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The inclusion of covariates improves the prediction of class memberships in latent class analysis (LCA). Several methods for examining covariate effects have been developed over the past decade; however, researchers have limited to the comparisons of the performance among these methods in cases of the single-level LCA. The present study investigated the performance of three different methods for examining covariate effects in a multilevel setting. We conducted a simulation to compare the performance of the three methods when level-1 and level-2 covariates were simultaneously incorporated into the nonparametric multilevel latent class model to predict latent class membership at each level. The simulation results revealed that the bias-adjusted three-step maximum likelihood method performed equally well as the one-step method when the sample sizes were sufficiently large and the latent classes were distinct from each other. However, the unadjusted three-step method significantly underestimated the level-1 covariate effect in most conditions.
机译:包含协变量可改善潜在类别分析(LCA)中类别成员的预测。在过去的十年中,已经开发出了几种检验协变量效应的方法。但是,研究人员仅限于在单级LCA情况下比较这些方法的性能。本研究调查了在多级环境中检查协变量效应的三种不同方法的性能。我们进行了仿真,比较了将1级和2级协变量同时合并到非参数多级潜在类模型中以预测每个级别的潜在类成员时三种方法的性能。仿真结果表明,当样本量足够大且潜在类别彼此不同时,经过偏差调整的三步最大似然法的效果与单步法相同。但是,在大多数情况下,未经调整的三步法大大低估了1级协变量效应。

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