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Resampling methods for spatial regression models under a class of stochastic designs

机译:一类随机设计下空间回归模型的重采样方法

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In this paper we consider the problem of bootstrapping a class of spatial regression models when the sampling sites are generated by a (possibly nonuniform) stochastic design and are irregularly spaced. It is shown that the natural extension of the existing block bootstrap methods for grid spatial data does not work for irregularly spaced spatial data under nonuniform stochastic designs. A variant of the blocking mechanism is proposed. It is shown that the proposed block bootstrap method provides a valid approximation to the distribution of a class of M-estimators; of the spatial regression parameters. Finite sample properties of the method are investigated through a moderately large simulation study and a real data example is given to illustrate the methodology.
机译:在本文中,我们考虑了当采样点是由(可能是不均匀的)随机设计生成且间隔不规则时,引导一类空间回归模型的问题。结果表明,在非均匀随机设计下,网格空间数据的现有块自举方法的自然扩展不适用于空间不规则的空间数据。提出了一种阻塞机制的变体。结果表明,所提出的块自举方法为一类M估计量的分布提供了有效的近似值。空间回归参数。通过一个中等规模的模拟研究来研究该方法的有限样本属性,并给出一个实际的数据示例来说明该方法。

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