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Randomization-based inference about latent variables from complex samples: The case of two-stage sampling.

机译:基于复杂样本的潜在变量的基于随机化的推断:两阶段采样的情况。

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摘要

In large-scale assessments, such as the National Assessment of Educational Progress (NAEP), plausible values based on Multiple Imputations (MI) have been used to estimate population characteristics for latent constructs under complex sample designs. Mislevy (1991) derived a closed-form analytic solution for a fixed-effect model in creating plausible values assuming a classical test theory model and a stratified student sample and proposed an analogous solution for a random-effects model to be applied with a two-stage student sample design. The research reported here extends the discussion of this random-effects model under the classical test theory framework. Under the simplified assumption of known population parameters, analytical solutions are provided for multiple imputations in the case of the classical test theory measurement model and two-stage sampling and their properties are verified in reconstructing population properties for the unobservable latent variables. With the more practical assumptions of unknown population and cluster means, this study empirically examines the reconstruction of population attributes. Next, properties of sample statistics are examined. Specifically, this research explores the impact of the variance components and sample sizes on the sampling variance of the MI-based estimate for the population mean. Findings include significant predictors and influential factors. Last, the relationships between the sampling variance of the estimate of the population mean based on the imputations and those based on observations of the true score and the observed score are discussed. The sampling variance based on the imputed score is expected to be the higher boundary of that based on the observed score, which is expected to be the higher boundary of that based on the true score.
机译:在大规模评估中,例如《国家教育进步评估》(NAEP),已经使用了基于多重插补(MI)的合理值来估计复杂样本设计下潜在构建体的种群特征。 Mislevy(1991)在假设经典测试理论模型和分层学生样本的情况下,得出了在创建合理值时固定效应模型的闭式解析解,并提出了将随机效应模型与两个模型结合使用的类似解。阶段学生样本设计。本文报道的研究扩展了在经典测试理论框架下对这种随机效应模型的讨论。在已知总体参数的简化假设下,在经典测试理论测量模型和两阶段采样的情况下,为多重插值提供了解析解,并在重构不可观察的潜在变量的总体属性时验证了它们的性质。在未知人口和聚类均值的更实际假设下,本研究从经验上考察了人口属性的重建。接下来,检查样本统计信息的属性。具体而言,本研究探讨了方差成分和样本量对基于MI的总体均值估计值的抽样方差的影响。研究结果包括重要的预测因素和影响因素。最后,讨论了基于插值的总体均值估计的抽样方差与基于真实分数和观测分数的观察值之间的关系。基于推算得分的采样方差预期是基于观察到的分数的较高边界,而期望采样方差是基于真实分数的较高的边界。

著录项

  • 作者

    Li, Tiandong.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Education Tests and Measurements.;Statistics.;Psychology Psychometrics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 136 p.
  • 总页数 136
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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