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SEMIPARAMETRIC LATENT VARIABLE TRANSFORMATION MODELS FOR MULTIPLE MIXED OUTCOMES

机译:多种结果的半参数隐含变量转换模型

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Technological advances that allow multiple outcomes to be routinely collected have brought a high demand for valid statistical methods that can summarize and study the latent variables underlying them. Outcome data with continuous and ordinal components present statistical challenges. We develop here a new class of semiparametric latent variable transformation models to summarize the multiple correlated outcomes of mixed types in a data-driven way. We propose a series of estimating equation-based and likelihood-based procedures for estimation and inference. The resulting estimators are shown to be n~(1/2)-consistent (even for nonparametric link functions) and asymptotically normal. Simulations suggest robustness as well as high efficiency, and the proposed approach is applied to assess the effectiveness of recombinant tissue plasminogen activator on ischemic stroke patients.
机译:允许常规收集多种结果的技术进步对有效的统计方法提出了很高的要求,这些统计方法可以汇总和研究潜在的潜在变量。具有连续和有序成分的结果数据提出了统计挑战。我们在这里开发了一类新的半参数潜在变量转换模型,以数据驱动的方式总结了混合类型的多个相关结果。我们提出了一系列基于方程式和似然估计的过程进行估计和推理。所得的估计量显示为n〜(1/2)一致(即使对于非参数链接函数也是如此)且渐近正态。模拟表明了鲁棒性和高效率,并且所提出的方法被用于评估重组组织纤溶酶原激活物对缺血性中风患者的有效性。

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