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Comparing regression methods to predict species richness patterns

机译:比较回归方法以预测物种丰富度模式

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Multivariable regression models have been used extensively as spatial modelling tools. However, other regression approaches are emerging as more efficient techniques. This paper attempts to present a synthesis of Generalised Regression Models (Generalized Linear Models, GLMs, Generalized Additive Models, GAMs), and a Geographically Weighted Regression, GWR, implemented in a GAM, explaining their statistical formulations and assessing improvements in predictive accuracy compared with linear regressions. The problems associated with these approaches are also discussed. A digital database developed with Geographic Information Systems (GIS), including environmental maps and bird species richness distribution in northern Spain, is used for comparison of the techniques. GWR using splines has shown the highest improvement in accounted deviance when compared with traditional linear regression approach, followed by GAM and GLM.
机译:多变量回归模型已被广泛用作空间建模工具。但是,其他回归方法正在作为更有效的技术出现。本文试图介绍在GAM中实现的广义回归模型(广义线性模型,GLM,广义加性模型,GAM)和地理加权回归GWR的综合,解释它们的统计公式,并评估与线性回归。还讨论了与这些方法相关的问题。与地理信息系统(GIS)合作开发的数字数据库,包括西班牙北部的环境地图和鸟类物种丰富度分布,用于比较这些技术。与传统的线性回归方法相比,使用样条曲线的GWR在考虑的偏差方面显示出最高的改进,其次是GAM和GLM。

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