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HIGHLIGHTING DIFFERENCES BETWEEN CONDITIONAL AND UNCONDITIONAL QUANTILE REGRESSION APPROACHES THROUGH AN APPLICATION TO ASSESS MEDICATION ADHERENCE

机译:通过评估药物依从性的应用条件和非条件量回归方法之间的突出差异

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摘要

The quantile regression (QR) framework provides a pragmatic approach in understanding the differential impacts of covariates along the distribution of an outcome. However, the QR framework that has pervaded the applied economics literature is based on the conditional quantile regression method. It is used to assess the impact of a covariate on a quantile of the outcome conditional on specific values of other covariates. In most cases, conditional quantile regression may generate results that are often not generalizable or interpretable in a policy or population context. In contrast, the unconditional quantile regression method provides more interpretable results as it marginalizes the effect over the distributions of other covariates in the model. In this paper, the differences between these two regression frameworks are highlighted, both conceptually and econometrically. Additionally, using real-world claims data from a large US health insurer, alternative QR frameworks are implemented to assess the differential impacts of covariates along the distribution of medication adherence among elderly patients with Alzheimer’s disease.
机译:分位数回归(QR)框架提供了一种实用的方法,可以理解协变量沿结果分布的不同影响。但是,已经遍及应用经济学文献的QR框架是基于条件分位数回归方法的。它用于评估以其他协变量的特定值为条件的协变量对结果分位数的影响。在大多数情况下,条件分位数回归可能会产生在政策或人群背景下通常无法推广或解释的结果。相反,无条件分位数回归方法提供了更多可解释的结果,因为它使模型中其他协变量分布的影响微不足道。在本文中,从概念上和计量上强调了这两个回归框架之间的差异。此外,利用来自美国一家大型医疗保险公司的实际索赔数据,可以采用其他QR框架来评估协变量对老年痴呆症患者依从性依从性分布的不同影响。

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