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Measuring the Discrepancy of a Parametric Model via Local Polynomial Smoothing

机译:通过局部多项式平滑测量参数模型的差异

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In the context of multivariate mean regression, we propose a new method to measure and estimate the inadequacy of a given parametric model. The measure is basically the missed fraction of variation after adjusting the best possible parametric model from a given family. The proposed approach is based on the minimum L~2-distance between the true but unknown regression curve and a given model. The estimation method is based on local polynomial averaging of residuals with a polynomial degree that increases with the dimension d of the covariate. For any d≥1 and under some weak assumptions we give a Bahadur-type representation of the estimator from which n~(1/2)-consistency and asymptotic normality are derived for strongly mixing variables. We report the outcomes of a simulation study that aims at checking the finite sample properties of these techniques. We present the analysis of a dataset on ultrasonic calibration for illustration.
机译:在多元均值回归的背景下,我们提出了一种新的方法来测量和估计给定参数模型的不足。度量基本上是在调整给定族的最佳可能参数模型之后遗漏的变化分数。所提出的方法基于真实但未知的回归曲线与给定模型之间的最小L〜2距离。估计方法基于残差的局部多项式平均,其多项式随协变量的维数d增大。对于任何d≥1,并在一些弱假设下,我们给出了估计量的Bahadur型表示形式,从中可以得出强混合变量的n〜(1/2)一致性和渐近正态性。我们报告了旨在检查这些技术的有限样本属性的模拟研究的结果。我们提出了超声校准数据集的分析说明。

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