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Transformada Reversa das Estimativas de Krigagem Ranqueadas

机译:排序Kriging估计的逆变换

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Kriging of raw data presenting distributions with positive skewness must be avoided because the strong influence of a few high values in the resulting estimates. The solution is to apply data transformation, which changes the shape of original distribution into a symmetric distribution. Kriging of transformed data is performed and then back-transformed to the original scale of measurement. In this paper, we examine the uniform score transform that results in a uniform distribution. Ordinary kriging estimates of uniform score data results in a bell-shaped distribution, since the tails of the distribution are lost in the estimation process because of the smoothing effect. The back-transformation of this bell-shaped distribution result in biased estimates. Therefore, the solution proposed in this paper is to correct the smoothing effect of the rank order kriging estimates before transforming them back to the scale of raw data. Results showed this algorithm is reliable and back-transformed estimates are unbiased in relation to the sample data.
机译:必须避免使用原始数据的Kriging来表示正偏度的分布,因为结果估计中一些高值的强烈影响。解决方案是应用数据转换,该转换将原始分布的形状更改为对称分布。进行转换数据的克里金法,然后反向转换为原始度量标准。在本文中,我们研究了导致均匀分布的均匀分数变换。均匀分数数据的普通克里金法估计会产生钟形分布,因为分布的尾部由于平滑效果而在估计过程中丢失了。此钟形分布的逆变换导致偏差估计。因此,本文提出的解决方案是在将秩阶克里金估计转换回原始数据规模之前,先校正其平滑效果。结果表明,该算法是可靠的,并且相对于样本数据而言,反向变换后的估计没有偏见。

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