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Local linear M-estimation in non-parametric spatial regression

机译:非参数空间回归中的局部线性M估计

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摘要

A robust version of local linear regression smoothers augmented with variable bandwidths is investigated for dependent spatial processes. The (uniform) weak consistency as well as asymptotic normality for the local linear M-estimator (LLME) of the spatial regression function g(x) are established under some mild conditions. Furthermore, an additive model is considered to avoid the curse of dimensionality for spatial processes and an estimation procedure based on combining the marginal integration technique with LLME is applied in this paper. Meanwhile, we present a simulated study to illustrate the proposed estimation method. Our simulation results show that the estimation method works well numerically.
机译:针对相关的空间过程,研究了使用可变带宽增强的局部线性回归平滑器的稳健版本。在某些温和条件下,建立了空间回归函数g(x)的局部线性M估计量(LLME)的(一致)弱一致性以及渐近正态性。此外,考虑了加性模型以避免空间过程的维数诅咒,并且本文采用了基于边际积分技术与LLME相结合的估计程序。同时,我们提供了一个模拟研究来说明所提出的估计方法。仿真结果表明,该估计方法在数值上可行。

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