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Practical use of robust GCV and modified GCV for spline smoothing

机译:健壮的GCV和改良的GCV在样条平滑中的实际使用

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Generalized cross-validation (GCV) is a popular parameter selection criterion for spline smoothing of noisy data, but it sometimes yields a severely undersmoothed estimate, especially if the sample size is small. Robust GCV (RGCV) and modified GCV are stable extensions of GCV, with the degree of stabilization depending on a parameter for RGCV and on a parameter for modified GCV. While there are favorable asymptotic results about the performance of RGCV and modified GCV, little is known for finite samples. In a large simulation study with cubic splines, we investigate the behavior of the optimal values of and , and identify simple practical rules to choose them that are close to optimal. With these rules, both RGCV and modified GCV perform significantly better than GCV. The performance is defined in terms of the Sobolev error, which is shown by example to be more consistent with a visual assessment of the fit than the prediction error (average squared error). The results are consistent with known asymptotic results.
机译:广义交叉验证(GCV)是用于噪声数据的样条平滑的一种流行的参数选择标准,但有时会产生严重不足的估计,尤其是在样本量较小的情况下。健壮的GCV(RGCV)和修改的GCV是GCV的稳定扩展,其稳定程度取决于RGCV的参数和修改的GCV的参数。尽管关于RGCV和改进的GCV的性能有良好的渐近结果,但对于有限样本知之甚少。在带有三次样条的大型模拟研究中,我们调查和的最佳值的行为,并确定简单的实际规则以选择接近最佳值的规则。使用这些规则,RGCV和修改后的GCV的性能均明显优于GCV。性能是根据Sobolev误差定义的,通过示例显示,与预测误差(平均平方误差)相比,该视觉拟合更符合视觉评估。结果与已知的渐近结果一致。

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