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Discontinuities in robust nonparametric regression with alpha-mixing dependence

机译:具有alpha混合依赖性的鲁棒非参数回归中的不连续性

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摘要

The main idea of the paper is to introduce a robust regression estimation method under an alpha-mixing dependence assumption, staying free of any parametric model restrictions while also allowing for some sudden changes in the unknown regression function. The sudden changes in the model may correspond to discontinuity points (jumps) or higher order breaks (jumps in corresponding derivatives) as well. We firstly derive some important statistical properties for local polynomial M-smoother estimates and we will propose a statistical test to decide whether some given point of interest is significantly important for a change to occur or not. As the asymptotic distribution of the test statistic depends on quantities which are left unknownwealso introduce a bootstrap algorithm which can be used to mimic the target distribution of interest. All necessary proofs are provided together with some experimental results from a simulation study and a real data example.
机译:本文的主要思想是在alpha混合依赖假设下引入鲁棒的回归估计方法,不受任何参数模型限制,同时还允许未知回归函数的某些突然变化。模型中的突然变化也可能对应于不连续点(跳跃)或更高阶的中断(对应导数中的跳跃)。我们首先导出局部多项式M平滑估计的一些重要统计属性,然后我们将提出统计测试来确定某个给定的兴趣点对于发生变化是否非常重要。由于检验统计量的渐近分布取决于未知的数量,因此我们还引入了可用于模仿目标目标分布的自举算法。提供所有必要的证明,以及来自仿真研究和真实数据示例的一些实验结果。

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