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A Model Validation Procedure when Covariate Data are Missing at Random

机译:协变量数据随机丢失时的模型验证过程

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In the presence of missing covariates, standard model validation procedures may result in misleading conclusions. By building generalized score statistics on augmented inverse probability weighted complete-case estimating equations, we develop a new model validation procedure to assess the adequacy of a prescribed analysis model when covariate data are missing at random. The asymptotic distribution and local alternative efficiency for the test are investigated. Under certain conditions, our approach provides not only valid but also asymptotically optimal results. A simulation study for both linear and logistic regression illustrates the applicability and finite sample performance of the methodology. Our method is also employed to analyse a coronary artery disease diagnostic dataset.
机译:在缺少协变量的情况下,标准模型验证程序可能会导致误导性结论。通过在增强的逆概率加权完整案例估计方程上建立广义得分统计,我们开发了一种新的模型验证程序,可在协变量数据随机丢失时评估指定分析模型的适当性。研究了该测试的渐近分布和局部替代效率。在某些条件下,我们的方法不仅可以提供有效的结果,而且可以提供渐近最优的结果。线性和逻辑回归的仿真研究说明了该方法的适用性和有限的样本性能。我们的方法还用于分析冠状动脉疾病诊断数据集。

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