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Effects of Random Sampling Methods on Maximum Likelihood Estimates of a Simple Logistic Regression Model

机译:随机抽样方法对简单逻辑回归模型的最大似然估计的影响

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The paper investigates the comparative effects of several random sampling methods on the maximum likelihood estimates of a simple logistic regression model. The study uses simulated data (logistic populations with pre-defined parameter values) that used Monte Carlo methods to simulate. Sampling techniques include Simple Random Sampling (SRS) and six variations of Stratified Sampling where two are single-stage Stratified Sampling and four are choice-based (two-phase) Stratified Sampling. Parameter estimates arising under each sampling technique were compared using performance measures Bias, Standard ErrorandPercentage of models that are feasibly estimated. The simulation-based analysis found that choice-based sampling with proportional allocation in both phases is the best-suited sampling technique for parameter estimation of a simple logistic regression model.
机译:本文研究了几种随机采样方法对简单逻辑回归模型的最大似然估计的比较效果。该研究使用模拟数据(具有预定义的参数值的逻辑群体)使用Monte Carlo方法模拟。采样技术包括简单的随机抽样(SRS)和分层采样的六个变化,其中两个是单级分层采样,四个是基于选择的(两相)分层采样。使用可公开估计的模型的标准ErrorandPercement来比较每个采样技术下产生的参数估计。基于仿真的分析发现,两相中的比例分配采样基于选择的采样是用于简单逻辑回归模型的参数估计的最佳采样技术。

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