论文标题

使用仪器变量的完全贝叶斯半参数标量回归(SOFR)具有测量误差

A fully Bayesian semi-parametric scalar-on-function regression (SoFR) with measurement error using instrumental variables

论文作者

Zoh, Roger S., Luan, Yuanyuan, Tekwe, Carmen

论文摘要

现在,在健康研究中通常使用可穿戴设备(例如Actigraph)来监测或跟踪体育活动。这种趋势与精确评估体育锻炼对肥胖症等健康结果的影响的需求良好。当访问这些基于设备的体育活动与健康结果(例如体重指数)之间的关联时,基于设备的数据被视为功能,而结果是标量值的。这些设置中应用的回归模型是标量在功能回归(SOFR)。 SOFR中的大多数估计方法都假定功能协变量是精确观察到的,或者测量误差被视为随机误差。违反这种假设可以导致模型参数的估计和亚最佳分析。关于SOFR中测量方法的文献在非bayesian文献中很少,在贝叶斯文学中实际上不存在SOFR的文献。本文认为完全非参数贝叶斯测量误差校正了SOFR模型,该模型放松了这些模型中经常做出的所有约束假设。我们的估计依赖于仪器变量(IV)来确定测量误差模型。最后,我们引入了一个IV质量标量参数,该参数与所有模型参数共同估计。我们的方法易于实现,我们通过广泛的仿真来证明其有限的样本属性。最后,将开发的方法应用于国家健康和考试调查,以评估居住在美国的成年人中基于可穿戴设备的体育锻炼和体重指数的关系之间的关系。

Wearable devices such as the ActiGraph are now commonly used in health studies to monitor or track physical activity. This trend aligns well with the growing need to accurately assess the effects of physical activity on health outcomes such as obesity. When accessing the association between these device-based physical activity measures with health outcomes such as body mass index, the device-based data is considered functions, while the outcome is a scalar-valued. The regression model applied in these settings is the scalar-on-function regression (SoFR). Most estimation approaches in SoFR assume that the functional covariates are precisely observed, or the measurement errors are considered random errors. Violation of this assumption can lead to both under-estimation of the model parameters and sub-optimal analysis. The literature on a measurement corrected approach in SoFR is sparse in the non-Bayesian literature and virtually non-existent in the Bayesian literature. This paper considers a fully nonparametric Bayesian measurement error corrected SoFR model that relaxes all the constraining assumptions often made in these models. Our estimation relies on an instrumental variable (IV) to identify the measurement error model. Finally, we introduce an IV quality scalar parameter that is jointly estimated along with all model parameters. Our method is easy to implement, and we demonstrate its finite sample properties through an extensive simulation. Finally, the developed methods are applied to the National Health and Examination Survey to assess the relationship between wearable-device-based measures of physical activity and body mass index among adults living in the United States.

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