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Estimating functions and derivatives via adaptive penalized splines

机译:通过自适应惩罚样条估算函数和衍生物

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摘要

Adaptive penalized splines via radial basis are constructed to estimate regression functions and their derivatives. A weight vector based on the range of observations is embedded into the penalty matrix, which remarkably improves the adaptability of the penalized spline smoothing model. Fast computation and comparison with traditional spline models are studied, and the empirical results and simulations show that the new method outperforms smoothing splines, traditional penalized splines and local polynomial smoothing when estimating regression functions and their derivatives, particularly when the observations have inhomogeneous variation.
机译:通过径向基础的自适应惩罚样条标构造成估计回归函数及其衍生物。 基于观察范围的权重向量嵌入到惩罚矩阵中,这显着提高了惩罚的花键平滑模型的适应性。 研究了快速计算和与传统样条模型的比较,经验结果和模拟表明,当估计回归函数及其衍生物时,新方法优于平滑花键,传统的惩罚样条和局部多项式平滑,特别是当观察发生时的衍生物时。

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