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Unified modeling based on SVM and SVR for prediction of forest area ratio by human population density and relief energy

机译:基于SVM和SVR的统一建模,可通过人口密度和救济能量预测森林面积比

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Deforestation is caused by various factors. In the literature, the impact of human activities as well as geographic circumstances on forests has been extensively discussed. Tanaka and Nishii have studied statistical models for prediction of forest area ratio by covariates: human population density and relief energy [1-3] observed in a grid-cell system. Parametric non-linear regression functions of the covariates were used for predicting forest coverage ratio [1], and cubic spline functions were also used for detection of small fluctuation of regression functions [2]. Furthermore, zero-one inflated distributions were proposed for classification of each site into one of three categories: completely-deforested, fully-forest-covered or partly-deforested areas [3]. These methods took the spatial dependency into the modeling, which is not an easy task.
机译:森林砍伐是由多种因素引起的。在文献中,已经广泛讨论了人类活动以及地理环境对森林的影响。田中和西井研究了统计模型,可通过以下变量预测森林面积比:在网格单元系统中观察到的人口密度和救济能量[1-3]。协变量的参数非线性回归函数用于预测森林覆盖率[1],三次样条函数也用于检测回归函数的小波动[2]。此外,提出了零膨胀的分布,以将每个站点分为以下三类之一:完全砍伐森林,完全覆盖森林或部分砍伐森林的地区[3]。这些方法将空间依赖性纳入建模中,这并非易事。

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