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A comparison of population-averaged and cluster-specific approaches in the context of unequal probabilities of selection.

机译:在选择概率不相等的情况下,采用人口平均方法和特定群体方法的比较。

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摘要

Sampling designs of large-scale, federally funded studies are typically complex, involving multiple design features (e.g., clustering, unequal probabilities of selection). Researchers must account for these features in order to obtain unbiased point estimators and make valid inferences about population parameters. Single-level (i.e., population-averaged) and multilevel (i.e., cluster-specific) methods provide two alternatives for modeling clustered data. Single-level methods rely on the use of adjusted variance estimators to account for dependency due to clustering, whereas multilevel methods incorporate the dependency into the specification of the model.;Although the literature comparing single-level and multilevel approaches is vast, comparisons have been limited to the context in which all sampling units are selected with equal probabilities (thus circumventing the need for sampling weights). Weighted multilevel modeling is more complex than weighted single-level modeling, and fully flexible methods for estimating weighted multilevel models have only recently been developed. Both approaches are used in practice, but researchers are left with minimal guidance as to which approach is most appropriate.;The goal of this study was to determine under what conditions single-level and multilevel estimators outperform one another (with respect to bias, mean square error, coverage, and root mean square error) in the context of a two-stage sampling design with unequal probabilities of selection. Monte Carlo simulation methods were used to evaluate the impact of several factors, including population model, informativeness of the design, distribution of the outcome variable, intraclass correlation coefficient, cluster size, and estimation method. Results indicated that the unweighted estimators performed similarly across conditions, whereas the weighted single-level estimators tended to outperform the weighted multilevel estimators, particularly under non-ideal sample conditions. Multilevel weight approximation methods did not perform well when the design was informative.;Single-level and multilevel approaches both have advantages and disadvantages, so it is recommended that researchers validate their findings by running the analyses multiple times using different methods. Convergence across methods lends support to the findings, whereas divergence provides a starting point for identifying potentially unreliable results. Ultimately, the appropriateness of a statistical method depends on the researcher's aims, so even a seemingly well-performing approach may not be suitable.
机译:由联邦政府资助的大规模研究的抽样设计通常很复杂,涉及多个设计特征(例如,聚类,不平等的选择概率)。研究人员必须考虑这些特征,以获得无偏点估计量,并对种群参数做出有效推论。单级(即总体平均)和多级(即特定于群集)方法为建模群集数据提供了两种选择。单级方法依赖于使用调整后的方差估计量来解决因聚类引起的依赖性,而多级方法则将依赖性纳入模型的规范中。尽管比较单级方法和多级方法的文献很多,但已有很多比较。限于在所有概率均等的情况下选择所有采样单位的环境(从而避免了对采样权重的需求)。加权多级建模比加权单级建模更复杂,并且估计加权多级模型的完全灵活的方法直到最近才被开发出来。两种方法都在实践中使用,但研究人员对哪种方法最合适的指导很少。;这项研究的目的是确定单级估计和多级估计在哪种条件下表现优于对方(关于偏倚,均值均方误差,覆盖率和均方根误差)在两阶段抽样设计中具有不相等的选择概率。蒙特卡罗模拟方法用于评估几个因素的影响,包括人口模型,设计的信息性,结果变量的分布,类内相关系数,聚类大小和估计方法。结果表明,未加权的估计量在各种条件下的表现相似,而加权的单级估计量往往优于加权的多级估计量,尤其是在非理想样本条件下。当设计提供信息时,多级权重逼近方法效果不佳。;单级和多级方法各有优缺点,因此建议研究人员通过使用不同方法多次运行分析来验证其发现。跨方法的融合为发现提供了支持,而差异为识别潜在的不可靠结果提供了一个起点。归根结底,统计方法的适当性取决于研究人员的目标,因此,即使是一种看似表现良好的方法也可能不合适。

著录项

  • 作者

    Koziol, Natalie A.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Psychology Psychometrics.;Statistics.;Education Educational Psychology.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 221 p.
  • 总页数 221
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:52:54

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