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Comparative Analysis for Robust Penalized Spline Smoothing Methods

机译:鲁棒惩罚样条平滑方法的比较分析

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Smoothing noisy data is commonly encountered in engineering domain, and currently robust penalized regression spline models are perceived to be the most promising methods for coping with this issue, due to their flexibilities in capturing the nonlinear trends in the data and effectively alleviating the disturbance from the outliers. Against such a background, this paper conducts a thoroughly comparative analysis of two popular robust smoothing techniques, theM-type estimator andS-estimation for penalized regression splines, both of which are reelaborated starting from their origins, with their derivation process reformulated and the corresponding algorithms reorganized under a unified framework. Performances of these two estimators are thoroughly evaluated from the aspects of fitting accuracy, robustness, and execution time upon the MATLAB platform. Elaborately comparative experiments demonstrate that robust penalized spline smoothing methods possess the capability of resistance to the noise effect compared with the nonrobust penalized LS spline regression method. Furthermore, theM-estimator exerts stable performance only for the observations with moderate perturbation error, whereas theS-estimator behaves fairly well even for heavily contaminated observations, but consuming more execution time. These findings can be served as guidance to the selection of appropriate approach for smoothing the noisy data.
机译:在工程领域中通常会遇到使噪声数据平滑的问题,并且由于其可灵活捕获数据中的非线性趋势并有效缓解来自噪声的干扰,因此,目前鲁棒的惩罚回归样条模型被认为是解决该问题的最有前途的方法。离群值。在这样的背景下,本文对两种流行的鲁棒平滑技术进行了全面的比较分析,分别是惩罚回归样条的M型估计器和S估计,这两种方法均从其源头入手,重新推导了它们的推导过程和相应的算法。在统一框架下进行了重组。从MATLAB平台上的拟合精度,鲁棒性和执行时间等方面全面评估了这两个估计器的性能。精心比较的实验表明,与非鲁棒的惩罚LS样条回归方法相比,鲁棒的惩罚性样条平滑方法具有抗噪声效果的能力。此外,M估计器仅对具有中等扰动误差的观测值发挥稳定的性能,而S估计器即使在严重污染的观测值下也表现良好,但是会花费更多的执行时间。这些发现可作为选择适当方法以平滑噪声数据的指南。

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