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Comparison of classical, kernel-based, and nearest neighbors regression estimators using the design-based Monte Carlo approach for two-phase forest inventories

机译:使用基于设计的蒙特卡洛方法对两阶段森林清单进行比较的经典,基于核和最近邻回归估计量的比较

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This paper compares design-based properties of the classical two-phase regression estimator with several nonparametric kernel-based estimators of which k nearest neighbors (kNN) is a special case. Metrics are based on the Euclidean distance applied to either a multidimensional space of explanatory variables or to a one-dimensional space of predictions obtained from a linear model. The main concepts of kernel-based regression estimators are reformulated in the design-based Monte Carlo approach to forest inventory. The results, based on a case study of a forest inventory in Switzerland and extensive simulations, suggest that the commonly used analytical external variance formula may systematically underestimate the true variance for a variety of kernel-based estimators including kNN but that it is still adequate for the classical regression estimator. Although using a bootstrap variance can help to correct this underestimation, it was also found that the bootstrap variance estimates could be unstable if the optimal bandwidth is recalculated in each bootstrap sample. These findings suggest that if the model captures the main features of the underlying process, then it is advisable to use the classical regression estimator, because it performs at least as well as the other techniques and is by far simpler to implement.
机译:本文将经典两阶段回归估计器的基于设计的属性与几种非参数基于核的估计器进行比较,其中k个最近邻(kNN)是特例。度量基于应用于解释变量的多维空间或从线性模型获得的预测的一维空间的欧几里得距离。基于核的回归估计量的主要概念在基于设计的蒙特卡洛方法的森林资源清单中得到了重新表述。基于对瑞士森林资源调查的案例研究和广泛的模拟,结果表明,常用的分析外部方差公式可能会系统地低估包括kNN在内的各种基于核的估计量的真实方差,但仍足以满足经典回归估计量。尽管使用引导程序方差可以帮助纠正这种低估,但还发现,如果在每个引导程序样本中重新计算最佳带宽,则引导程序方差估计值可能会不稳定。这些发现表明,如果模型捕获了潜在过程的主要特征,则建议使用经典回归估计器,因为它的性能至少与其他技术一样好,并且易于实施。

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