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On Optimal Point and Block Prediction in Log-Gaussian Random Fields

机译:对数高斯随机场中的最优点和块预测

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This work discusses the problems of point and block prediction in log-Gaussian random fields with unknown mean. New point and block predictors are derived that are optimal in mean squared error sense within certain families of predictors that contain the corresponding lognormal kriging point and block predictors, as well as a block predictor originally motivated under the assumption of 'preservation of lognormality', and hence improve upon them. A comparison between the optimal, lognormal kriging and best linear unbiased predictors is provided, as well as between the two new block predictors. Somewhat surprisingly, it is shown that the corresponding optimal and lognormal kriging predictors are almost identical under most scenarios. It is also shown that one of the new block predictors is uniformly better than the other.
机译:这项工作讨论了均值未知的对数高斯随机场中的点和块预测问题。得出新的点和块预测变量,它们在包含相应对数正态克里金点和块预测变量的某些预测变量家族中,在均方误差意义上是最佳的,以及最初基于“保留对数正态性”假设而驱动的块预测变量,以及因此改善他们。提供了最佳,对数正态克里金法和最佳线性无偏预测器之间的比较,以及两个新的块预测器之间的比较。令人惊讶的是,它表明,在大多数情况下,相应的最佳和对数正态克里金法预测变量几乎相同。还表明,新的块预测器之一在整体上优于另一个。

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