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Maximum likelihood estimation for outcome-dependent samples

机译:结果依赖样本的最大似然估计

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In outcome-dependent sampling, the continuous or binary outcome variable in a regression model is available in advance to guide selection of a sample on which explanatory variables are then measured. Selection probabilities may either be a smooth function of the outcome variable or be based on a stratification of the outcome. In many cases, only data from the final sample is accessible to the analyst. A maximum likelihood approach for this data configuration is developed here for the first time. The likelihood for fully general outcome-dependent designs is stated, then the special case of Poisson sampling is examined in more detail. The maximum likelihood estimator differs from the well-known maximum sample likelihood estimator, and an information bound result shows that the former is asymptotically more efficient. A simulation study suggests that the efficiency difference is generally small. Maximum sample likelihood estimation is therefore recommended in practice when only sample data is available. Some new smooth sample designs show considerable promise.
机译:在依赖于结果的采样中,回归模型中的连续或二进制结果变量预先获得,以指导选择然后测量解释变量的样本。选择概率可以是结果变量的平滑功能,或者基于结果的分层。在许多情况下,分析师只能访问来自最终样本的数据。这是第一次开发此数据配置的最大似然方法。规定了完全一般结果依赖设计的可能性,然后更详细地检查了泊松抽样的特殊情况。最大似然估计器与众所周知的最大样本似然估计器不同,信息绑定结果表明前者是渐近的更有效的。仿真研究表明效率差异一般很小。因此,在实践中,建议只有在实践中仅在使用样本数据时建议使用最大样本似然估计。一些新的光滑样本设计显示了相当大的承诺。

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