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Finite Population Correction for Two-Level Hierarchical Linear Models

机译:两级层次线性模型的有限种群校正

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The research literature has paid little attention to the issue of finite population at a higher level in hierarchical linear modeling. In this article, we propose a method to obtain finite-population-adjusted standard errors of Level-1 and Level-2 fixed effects in 2-level hierarchical linear models. When the finite population at Level-2 is incorrectly assumed as being infinite, the standard errors of the fixed effects are overestimated, resulting in lower statistical power and wider confidence intervals. The impact of ignoring finite population correction is illustrated by using both a real data example and a simulation study with a random intercept model and a random slope model. Simulation results indicated that the bias in the unadjusted fixed-effect standard errors was substantial when the Level-2 sample size exceeded 10% of the Level-2 population size; the bias increased with a larger intraclass correlation, a larger number of clusters, and a larger average cluster size. We also found that the proposed adjustment produced unbiased standard errors, particularly when the number of clusters was at least 30 and the average cluster size was at least 10. We encourage researchers to consider the characteristics of the target population for their studies and adjust for finite population when appropriate.
机译:研究文献在层次线性建模中很少关注有限人群的问题。在本文中,我们提出了一种获得2级层次线性模型中级别1和2级固定效应的有限型调整的标准误差的方法。当将级别2的有限种群错误地假定为无限时,固定效应的标准误差被高估,从而导致较低的统计功率和更广泛的置信区间。通过使用真实的数据示例和具有随机截距模型和随机斜率模型的仿真研究来说明忽略有限种群校正的影响。仿真结果表明,当2级样本量超过2级种群大小的10%时,未经调整的固定效应标准误差的偏差很大。偏差随着较大的类内相关性,较大数量的簇和较大的平均簇大小而增加。我们还发现,拟议的调整会产生公正的标准误差,尤其是当簇数量至少为30,平均簇大小至少为10。我们鼓励研究人员考虑其研究目标人群的特征并适应有限的研究。适当的人口。

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