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Smoothing noisy data for irregular regions using penalized bivariate splines on triangulations

机译:使用三角剖分上的罚二元样条平滑不规则区域的噪声数据

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摘要

The penalized splinemethod has been widely used for estimating univariate smooth functions based on noisy data. This paper studies its extension to the twodimensional case. To accommodate the need of handling data distributed on irregular regions, we consider bivariate splines defined on triangulations. Penalty functions based on the second-order derivatives are employed to regularize the spline fit and generalized cross-validation is used to select the penalty parameters. A simulation study shows that the penalized bivariate spline method is competitive to some wellestablished two-dimensional smoothers. The method is also illustrated using a real dataset on Texas temperature.
机译:惩罚样条法已被广泛用于基于噪声数据估计单变量平滑函数。本文研究了它对二维情况的扩展。为了满足处理分布在不规则区域上的数据的需要,我们考虑了在三角剖分中定义的双变量样条。使用基于二阶导数的罚函数对样条拟合进行正则化,并使用广义交叉验证选择罚参数。仿真研究表明,惩罚二元样条曲线方法与某些完善的二维平滑器相比具有竞争力。还使用德克萨斯州温度的真实数据集说明了该方法。

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