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A Comparison of the Spatial Linear Model to Nearest Neighbor (k-NN) Methods for Forestry Applications

机译:林业应用空间线性模型在最近邻的比较(K-NN)方法

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摘要

Forest surveys provide critical information for many diverse interests. Data are often collected from samples, and from these samples, maps of resources and estimates of aerial totals or averages are required. In this paper, two approaches for mapping and estimating totals; the spatial linear model (SLM) and k-NN (k-Nearest Neighbor) are compared, theoretically, through simulations, and as applied to real forestry data. While both methods have desirable properties, a review shows that the SLM has prediction optimality properties, and can be quite robust. Simulations of artificial populations and resamplings of real forestry data show that the SLM has smaller empirical root-mean-squared prediction errors (RMSPE) for a wide variety of data types, with generally less bias and better interval coverage than k-NN. These patterns held for both point predictions and for population totals or averages, with the SLM reducing RMSPE from 9% to 67% over some popular k-NN methods, with SLM also more robust to spatially imbalanced sampling. Estimating prediction standard errors remains a problem for k-NN predictors, despite recent attempts using model-based methods. Our conclusions are that the SLM should generally be used rather than k-NN if the goal is accurate mapping or estimation of population totals or averages.
机译:森林调查为许多不同的利益提供了关键信息。数据通常是从样本中收集的,从这些样本中,需要资源图和空中总计或平均值的估计值。在本文中,提供了两种用于映射和估计总数的方法。理论上,通过模拟比较了空间线性模型(SLM)和k-NN(k最近邻),并将其应用于实际林业数据。虽然这两种方法都具有理想的属性,但经过审查表明,SLM具有预测最优性,并且可能非常健壮。人工种群和真实森林数据的重采样模拟显示,SLM对于多种数据类型具有较小的经验均方根预测误差(RMSPE),与k-NN相比,偏差通常较小,间隔覆盖范围更好。这些模式既适用于点预测,也适用于总体总数或平均值,与某些流行的k-NN方法相比,SLM将RMSPE从9%降低到67%,SLM对空间不平衡的采样也更可靠。尽管最近尝试使用基于模型的方法,但估计预测标准误差仍然是k-NN预测器的问题。我们的结论是,如果目标是准确映射或估计总体总数或平均值,则通常应使用SLM而不是k-NN。

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