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首页> 外文期刊>Journal of nonparametric statistics >Nonparametric estimation for time-varying transformation models with longitudinal data
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Nonparametric estimation for time-varying transformation models with longitudinal data

机译:具有纵向数据的时变变换模型的非参数估计

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Regression methods for longitudinal analyses have traditionally focused on conditional-mean-based models. In many situations, the relevant scientific questions could be better studied by modelling the conditional distributions of the outcome variables as a function of time and other covariates. In this paper, we propose a class of time-vary ing transformation models for modelling the cumulative distribution function of a response variable conditioning on a set of covariates, and develop a two-step smoothing method for estimating the time-varying parameters. Applications and finite sample properties of our models and smoothing estimators are demonstrated through a cohort study of childhood obesity and cardiovascular risk factors, and a simulation study. Theoretical properties are developed for the two-step local polynomial estimators. Our approach provides a useful statistical tool in longitudinal analysis when the conditional-mean-based methods are inappropriate.
机译:纵向分析的回归方法传统上集中在基于条件均值的模型上。在许多情况下,可以通过对作为时间和其他协变量的函数的结果变量的条件分布建模来更好地研究相关的科学问题。在本文中,我们提出了一种时变变换模型,用于对一组协变量上的响应变量条件的累积分布函数进行建模,并开发了一种两步平滑方法来估计时变参数。通过对儿童肥胖和心血管危险因素的队列研究和模拟研究,证明了我们模型和平滑估计量的应用和有限样本属性。为两步局部多项式估计器开发了理论性质。当基于条件均值的方法不合适时,我们的方法在纵向分析中提供了有用的统计工具。

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