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Compare and Evaluate the Performance of Gaussian Spatial Regression Models and Skew Gaussian Spatial Regression Based on Kernel Averaged Predictors

机译:比较和评估基于核平均预测器的高斯空间回归模型和偏高斯空间回归模型的性能

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In many problems in the field of spatial statistics, when modeling the trend functions, predictors or covariates are available and the goal is to build a regression model to describe the relationship between the response and predictors. Generally, in spatial regression models, the trend function is often linear and it is assumed that the response mean is a linear function of predictor values in the same location where the response variable is observed. But, in real applications, the neighboring predictors sometimes provide valuable information about the response variable particulary when the distance between the locations is small. Having considered this subject matter, Heaton and Gelfand [6] suggested using kernel averaged predictors for modeling trend functions in which neighboring predictor information are also used. The models proposed by Heaton an Gelfand seemed to be bound by data normality. So, in many more application problems, spatial response variables follow a skew distribution. Therefore, in this article, skew Gaussian spatial regression model is studied and the performance of the model is presented and evaluated in comparison with Gaussian spatial regression models based on kernel averaged predictors using simulation studies and real examples.
机译:在空间统计领域的许多问题中,在对趋势函数建模时,可以使用预测变量或协变量,目标是建立一个回归模型来描述响应和预测变量之间的关系。通常,在空间回归模型中,趋势函数通常是线性的,并且假定响应平均值是在观察到响应变量的相同位置中的预测值的线性函数。但是,在实际应用中,当位置之间的距离较小时,相邻的预测变量有时会提供有关响应变量的有价值的信息。考虑了这一主题后,Heaton和Gelfand [6]建议使用核平均预测器对趋势函数进行建模,其中还使用了相邻的预测器信息。 Heaton a Gelfand提出的模型似乎受到数据常态性的约束。因此,在更多应用问题中,空间响应变量遵循偏斜分布。因此,在本文中,研究了偏高斯空间回归模型,并与基于核平均预测因子的高斯空间回归模型进行了仿真研究和实际算例相比较,提出并评估了模型的性能。

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