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首页> 外文期刊>Open Journal of Statistics >Modified Cp Criterion for Optimizing Ridge and SmoothParameters in the MGR Estimator for the Nonparametric GMANOVA Model
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Modified Cp Criterion for Optimizing Ridge and SmoothParameters in the MGR Estimator for the Nonparametric GMANOVA Model

机译:非参数GMANOVA模型的MGR估计器中用于优化岭和平滑参数的修改Cp准则

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Longitudinal trends of observations can be estimated using the generalized multivariate analysis of variance (GMANOVA) model proposed by [10]. In the present paper, we consider estimating the trends nonparametrically using known basis functions. Then, as in nonparametric regression, an overfitting problem occurs. [13] showed that the GMANOVA model is equivalent to the varying coefficient model with non-longitudinal covariates. Hence, as in the case of the ordinary linear regression model, when the number of covariates becomes large, the estimator of the varying coefficient becomes unstable. In the present paper, we avoid the overfitting problem and the instability problem by applying the concept behind penalized smoothing spline regression and multivariate generalized ridge regression. In addition, we propose two criteria to optimize hyper parameters, namely, a smoothing parameter and ridge parameters. Finally, we compare the ordinary least square estimator and the new estimator.
机译:可以使用[10]提出的广义多元方差分析(GMANOVA)模型来估计观测的纵向趋势。在本文中,我们考虑使用已知的基函数非参数地估计趋势。然后,与非参数回归中一样,出现了过度拟合问题。 [13]表明,GMANOVA模型等效于具有非纵向协变量的变系数模型。因此,如在普通线性回归模型的情况下那样,当协变量的数量变大时,变化系数的估计器变得不稳定。在本文中,我们通过应用惩罚平滑平滑样条回归和多元广义岭回归背后的概念,避免了过度拟合问题和不稳定性问题。另外,我们提出了两个准则来优化超参数,即平滑参数和脊参数。最后,我们比较了普通最小二乘估计器和新估计器。

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