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Regularized Kriging: The Support Vectors Method Applied to Kriging

机译:正规化的Kriging:应用于Kriging的支持向量方法

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We explore the possible advantages of relaxing the universal kriging non-bias condition using the Support Vectors methodology. This leads to a regularized problem with restrictions, in which the objective function is the traditional variance term plus a term that penalises the bias, and whose resolution gives rise to a continuum of solutions for different values of the regularizer, including simple kriging and universal kriging as specific cases. The analysis also permits the identification of prediction points that will admit slack in the non-bias condition without adversely affecting the prediction. The simulations conducted demonstrate that when the process mean function is poorly specified and when there is a significant percentage of outliers, regularized kriging tends to improve the results of ordinary kriging. Given the relationship between kriging, regularization networks and Gaussian processes, the same considerations also apply to both the latter techniques.
机译:我们探讨了使用支持向量方法放松通用Kriging非偏置条件的可能优势。这导致了限制的正则化问题,其中客观函数是传统的差异项加上惩罚偏差的术语,并且其分辨率导致符合例子的不同值的延续的解决方案,包括简单的克里格和通用克里格作为具体情况。分析还允许识别预测点,该预测点将承认在非偏置条件下不利地影响预测。进行的模拟表明,当过程均值均值不良时,当出现显着的异常值百分比时,正则克里格倾向于改善普通克里格的结果。鉴于Kriging,正则化网络和高斯过程之间的关系,相同的考虑也适用于后一种技术。

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