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Fitting Proportional Odds Models to Educational Data with Complex Sampling Designs in Ordinal Logistic Regression

机译:在序数Logistic回归中利用复杂抽样设计拟合比例赔率模型对教育数据的影响

摘要

The conventional proportional odds (PO) model assumes that data are collected using simple random sampling by which each sampling unit has the equal probability of being selected from a population. However, when complex survey sampling designs are used, such as stratified sampling, clustered sampling or unequal selection probabilities, it is inappropriate to conduct ordinal logistic regression analyses without taking sampling design into account. Failing to do so may lead to biased estimates of parameters and incorrect corresponding variances. This study illustrates the use of PO models with complex survey data to predict mathematics proficiency levels using Stata and compare the results of PO models accommodating and not accommodating survey sampling features.
机译:传统的比例赔率(PO)模型假定数据是使用简单的随机采样收集的,通过该随机采样,每个采样单位都具有从总体中选择的相同概率。但是,当使用复杂的抽样调查设计时,例如分层抽样,聚类抽样或不等选择概率,进行序数逻辑回归分析而不考虑抽样设计是不合适的。否则,可能会导致参数估计偏差,并导致相应的方差不正确。这项研究说明了使用具有复杂调查数据的PO模型来使用Stata预测数学水平,并比较了容纳和不容纳调查抽样特征的PO模型的结果。

著录项

  • 作者

    Liu Xing; Koirala Hari;

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  • 年度 2013
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