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首页> 外文期刊>Forest Ecology and Management >Estimating forest attribute parameters for small areas using nearest neighbors techniques. (Special Issue: Emerging methods for handling missing data in forest ecology and management applications.)
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Estimating forest attribute parameters for small areas using nearest neighbors techniques. (Special Issue: Emerging methods for handling missing data in forest ecology and management applications.)

机译:使用最近邻技术估算小区域的森林属性参数。 (特刊:森林生态学和管理应用中处理缺失数据的新兴方法。)

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摘要

Nearest neighbors techniques have become extremely popular, particularly for use with forest inventory data. With these techniques, a population unit prediction is calculated as a linear combination of observations for a selected number of population units in a sample that are most similar, or nearest, in a space of ancillary variables to the population unit requiring the prediction. Nearest neighbors techniques are appealing for multiple reasons: they can be used with categorical response variables for which the objective is classification and with continuous response variables for which the objective is prediction; they can be used for both univariate and multivariate prediction; they are non-parametric in the sense that no assumptions regarding the distributions of response or predictor variables are necessary; they are synthetic in the sense that they can readily use information external to the geographic area for which an estimate is sought; they are useful for map construction, small area estimation, and inference; and they can be used with a wide variety of data sets. Recent advances and emerging issues in nearest neighbors techniques are reviewed for four topic areas: (1) distance metrics, (2) optimization, (3) diagnostic tools, and (4) inference. The focus of the study is estimation of mean forest stem volume per unit area for small areas using a combination of forest inventory observations and Landsat Thematic Mapper (TM) imagery. However, the concepts and techniques are generally applicable for all nearest neighbors problems.Digital Object Identifier http://dx.doi.org/10.1016/j.foreco.2011.06.039
机译:最近的邻居技术已变得非常流行,尤其是与森林清单数据一起使用时。利用这些技术,将人口单位预测计算为对样本中选定数量的人口单位的观察值的线性组合,这些样本在与需要预测的人口单位的辅助变量空间中最相似或最接近。最近的邻居技术之所以吸引人,原因有很多:它们可以与以目标为分类的分类响应变量以及以目标为预测的连续响应变量一起使用;它们可用于单变量和多变量预测;它们是非参数的,即无需对响应或预测变量的分布进行任何假设;从某种意义上讲,它们是合成的,因为它们可以方便地使用要进行估计的地理区域之外的信息;它们对于地图构建,小面积估计和推断很有用;它们可以用于各种数据集。本文针对四个主题领域对最近邻技术的最新进展和出现的问题进行了回顾:(1)距离度量,(2)优化,(3)诊断工具和(4)推理。该研究的重点是结合森林清查观测数据和Landsat Thematic Mapper(TM)影像,估算小区域每单位面积的平均森林茎体积。但是,这些概念和技术通常适用于所有最近的邻居问题。数字对象标识符http://dx.doi.org/10.1016/j.foreco.2011.06.039

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