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Non-Gaussian geostatistical modeling using (skew) t processes

机译:使用(偏斜)T进程的非高斯地统计学建模

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We propose a new model for regression and dependence analysis when addressing spatial data with possibly heavy tails and an asymmetric marginal distribution. We first propose a stationary process with t marginals obtained through scale mixing of a Gaussian process with an inverse square root process with Gamma marginals. We then generalize this construction by considering a skew-Gaussian process, thus obtaining a process with skew-t marginal distributions. For the proposed (skew) t process, we study the second-order and geometrical properties and in the t case, we provide analytic expressions for the bivariate distribution. In an extensive simulation study, we investigate the use of the weighted pairwise likelihood as a method of estimation for the t process. Moreover we compare the performance of the optimal linear predictor of the t process versus the optimal Gaussian predictor. Finally, the effectiveness of our methodology is illustrated by analyzing a georeferenced dataset on maximum temperatures in Australia.
机译:我们提出了一种新的回归和依赖性分析模型,当用可能重尾和不对称的边缘分布解决空间数据时。首先,首先提出了通过用γmamginals的逆平面根过程进行高斯工艺来获得T Marginals获得的静止过程。然后,我们通过考虑偏斜高斯过程来概括这种结构,从而获得具有偏斜边缘分布的过程。对于提议的(歪斜)T过程,我们研究了二阶和几何特性,在T案例中,我们为双变量分布提供分析表达式。在广泛的仿真研究中,我们调查了加权成对似然的使用作为T过程的估计方法。此外,我们比较T过程的最佳线性预测器与最佳高斯预测器的性能。最后,通过分析澳大利亚最大温度的地理参考数据集来说明我们的方法论的有效性。

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