Species Distribution Modeling with Spatial Point Process: Comparing Poisson and Zero Inflated Poisson-Based Algorithms

Jaka Pratama, A. Choiruddin
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Abstract

Spatial point pattern is randomly arranged collection of points distributed over space, such as the locations of a tree species in a forest. Such a study is also commonly known as Species Distribution Modeling (SDM), where the main concern is to relate the distribution of tree species and environmental variables. Within spatial point process framework, SDM is closely related to modeling the intensity of spatial point process. The standard technique for parameter estimation of the intensity is by method of Maximum Likelihood Estimation (MLE) employing Berman-Turner Approximation, resulting in Poisson-based regression. However, this technique could raise an issue due to a large number of dummy points required in the approximation since large number of dummy points relates to excessive zeroes in response variable. Previous studies suggest the application of Zero Inflated Poisson (ZIP) regression over Poisson regression to model response variable with excessive zeroes. This study compares Poisson and ZIP-based method for modelling the distribution of Beilschmiedia Pendula tree with respect to environmental covariates. We compared both techniques by Bayesian Information Criteria (BIC) and concluded that the ZIP-based method performs better mainly due to excessive zeroes from dummy points. In addition, elevation and gradient affect significantly the distribution of Beilschmiedia Pendula tree.
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基于空间点过程的物种分布建模:基于泊松和零膨胀泊松算法的比较
空间点模式是随机分布在空间上的点的集合,例如森林中树种的位置。这种研究通常也被称为物种分布模型(SDM),其主要关注的是将树种的分布与环境变量联系起来。在空间点过程框架内,SDM与空间点过程的强度建模密切相关。强度参数估计的标准技术是采用伯曼-特纳近似的极大似然估计方法,从而产生基于泊松的回归。然而,这种技术可能会引起一个问题,因为在近似中需要大量的虚拟点,因为大量的虚拟点与响应变量中的过多零有关。以往的研究建议将零膨胀泊松(ZIP)回归与泊松回归相比较,应用于具有过多零的响应变量模型。本研究比较了泊松和基于zipp的方法在环境协变量方面对beilschemidia Pendula树的分布进行建模。我们通过贝叶斯信息标准(BIC)比较了这两种技术,并得出结论,基于zip的方法性能更好,主要是由于虚拟点的过多零。海拔和坡度对垂叶树的分布有显著影响。
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