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Local attribute-similarity weighting regression algorithm for interpolating soil property valuesLocal attribute-similarity weighting regression algorithm for interpolating soil property values

机译:插值土壤属性值的局部属性-相似度加权回归算法插值土壤属性值的局部属性-相似度加权回归算法

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Existing spatial interpolation methods estimate the property values of an unmeasured point with observations of its closest points based on spatial distance (SD). However, considering that properties of the neighbors spatially close to the unmeasured point may not be similar, the estimation of properties at the unmeasured one may not be accurate. The present study proposed a local attribute-similarity weighted regression (LASWR) algorithm, which characterized the similarity among spatial points based on non-spatial attributes (NSA) better than on SD. The real soil datasets were used in the validation. Mean absolute error (MAE) and root mean square error (RMSE) were used to compare the performance of LASWR with inverse distance weighting (IDW), ordinary kriging (OK) and geographically weighted regression (GWR). Cross-validation showed that LASWR generally resulted in more accurate predictions than IDW and OK and produced a finer-grained characterization of the spatial relationships between SOC and environmental variables relative to GWR. The present research results suggest that LASWR can play a vital role in improving prediction accuracy and characterizing the influence patterns of environmental variables on response variable. Keywords: attribute similarity, geographically weighted regression, local regression, spatial interpolation DOI: 10.25165/j.ijabe.20171005.2209 Citation: Zhou J G, Dong D M, Li Y Y. Local attribute-similarity weighting regression algorithm for interpolating soil property values. Int J Agric & Biol Eng, 2017; 10(5): 95–103.
机译:现有的空间插值方法通过基于空间距离(SD)观察未测量点的最接近点来估计其属性值。但是,考虑到在空间上未测量点附近的邻居的属性可能不相似,因此未测量点的属性估计可能不准确。本研究提出了一种局部属性-相似度加权回归(LASWR)算法,该算法在基于非空间属性(NSA)的空间点之间的相似度优于在SD上的特征。实际土壤数据集用于验证。使用平均绝对误差(MAE)和均方根误差(RMSE)来比较LASWR与反距离权重(IDW),普通克里金法(OK)和地理加权回归(GWR)的性能。交叉验证表明,与IDW和OK相比,LASWR通常可得出更准确的预测,并且相对于GWR,SOC和环境变量之间的空间关系具有更精细的表征。目前的研究结果表明,LASWR在提高预测准确性和表征环境变量对响应变量的影响模式方面起着至关重要的作用。关键词:属性相似度,地理加权回归,局部回归,空间插值DOI:10.25165 / j.ijabe.20171005.2209引用:周建国,董东明,李彦炎。局部属性-相似度加权回归算法,用于插值土壤属性值。国际农业与生物工程杂志,2017; 10(5):95-103。

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