An algorithm for non-stationary spatial modelling using multiple secondary variables is developed. It combines Geostatistics with Quantile Random Forests to give a new interpolation and stochastic simulation algorithm. This paper introduces the method and shows that it has consistency results that are similar in nature to those applying to geostatistical modelling and to Quantile Random Forests. The method allows for embedding of simpler interpolation techniques, such as Kriging, to further condition the model. The algorithm works by estimating a conditional distribution for the target variable at each target location. The family of such distributions is called the envelope of the target variable. From this, it is possible to obtain spatial estimates, quantiles and uncertainty. An algorithm to produce conditional simulations from the envelope is also developed. As they sample from the envelope, realizations are therefore locally influenced by relative changes of importance of secondary variables, trends and variability.
翻译:开发了使用多个次要变量的非静止空间建模算法。 它将地球统计学与量性随机森林结合起来, 以提供一个新的内插和随机模拟算法。 本文介绍该方法, 并表明其一致性结果与适用于地理统计建模和量性随机森林的方法类似。 该方法允许嵌入更简单的内插技术, 如Kriging, 以进一步为模型提供条件。 该算法通过估计每个目标地点目标变量的有条件分布法来运作。 这种分布法的组合被称为目标变量的包体。 从此, 有可能获得空间估计、 量和不确定性。 从信封中生成有条件模拟的算法也会开发出来。 因此, 当它们从信封中取样时, 实现过程会受到次级变量、 趋势 和变异性 重要性 的相对变化 影响。