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首页> 外文期刊>Communications in Statistics >Comparison of spline estimator at various levels of autocorrelation in smoothing spline non parametric regression for longitudinal data
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Comparison of spline estimator at various levels of autocorrelation in smoothing spline non parametric regression for longitudinal data

机译:纵向数据平滑样条非参数回归中各种自相关级别的样条估计量的比较

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The purpose of this research are: (1) to obtain spline function estimation in non parametric regression for longitudinal data with and without considering the autocorrelation between data of observation within subject, (2) to develop the algorithm that generates simulation data with certain autocorrelation level based on size of sample (N) and error variance (EV), and (3) to establish shape of spline estimator in non parametric regression for longitudinal data to simulation with various level of autocorrelation, as well as compare DM and TM approaches in predicting spline estimator in the data simulation with different of autocorrelation observational data on within subject. The results of the application are as follows: (a) implementation of smoothing spline with penalized weighted least square (PWLS) approach with or without consideration of autocorrelation in general (in all sizes and all error variances levels) provides significantly different spline estimator when the autocorrelation level 0.8; (b) based on size comparison, spline estimator in non parametric regression smoothing spline with PLS approach with (DM), or without (DM) consideration of autocorrelation showed significantly different result in level of autocorrelation 0.8 (in overall size, moderate and large sample size), and 0.7 (in small sample size); (c) based on level of variance, spline estimator in non parametric regression smoothing spline with PLS approach with (DM), or without (DM) consideration of autocorrelation showed significantly different result in level of autocorrelation 0.8 (in overall level of variance, moderate and large variance), and 0.7 (in small variance).
机译:本研究的目的是:(1)在不考虑对象之间观测数据之间的自相关的情况下,对纵向数据进行非参数回归的样条函数估计;(2)开发生成具有一定自相关水平的仿真数据的算法(3)基于样本大小(N)和误差方差(EV),以及(3)在非参数回归中建立样条估计的形状,以对纵向数据进行各种自相关水平的模拟,并比较DM和TM方法进行预测数据模拟中的样条估计器,对象上具有不同的自相关观测数据。该应用程序的结果如下:(a)使用惩罚加权最小二乘(PWLS)方法实现平滑样条,总体上考虑或不考虑自相关(在所有大小和所有误差方差级别),当自相关水平> 0.8; (b)基于大小比较,使用(DM)或不使用(DM)的PLS方法进行非参数回归平滑样条的样条估计在自相关水平> 0.8时(整体大小,中等和较大)显着不同样本大小),并且> 0.7(小样本大小); (c)根据方差水平,使用(DM)或不使用(DM)PLS方法进行非参数回归平滑样条的样条估计在自相关水平> 0.8(总体方差水平,中和大方差),> 0.7(小方差)。

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