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首页> 外文期刊>Stochastic environmental research and risk assessment >Analyzing spatial ecological data using linear regression and wavelet analysis
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Analyzing spatial ecological data using linear regression and wavelet analysis

机译:使用线性回归和小波分析分析空间生态数据

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Spatial (two-dimensional) distributions in ecology are often influenced by spatial autocorrelation. In standard regression models, however, observations are assumed to be statistically independent. In this paper we present an alternative to other methods that allow for autocorrelation. We show that the theory of wavelets provides an efficient method to remove autocorrelations in regression models using data sampled on a regular grid. Wavelets are particularly suitable for data analysis without any prior knowledge of the underlying correlation structure. We illustrate our new method, called wavelet-revised model, by applying it to multiple regression for both normal linear models and logistic regression. Results are presented for computationally simulated data and real ecological data (distribution of species richness and distribution of the plant species Dianthus carthusianorum throughout Germany). These results are compared to those of generalized linear models and models based on generalized estimating equations. We recommend wavelet-revised models, in particular, as a method for logistic regression using large datasets.
机译:生态学中的空间(二维)分布通常受空间自相关的影响。但是,在标准回归模型中,假设观察值在统计上是独立的。在本文中,我们提出了允许自相关的其他方法的替代方法。我们表明,小波理论提供了一种有效的方法,可以使用在常规网格上采样的数据来消除回归模型中的自相关。小波特别适合于数据分析,而无需任何潜在的相关结构的先验知识。我们通过将其应用于正态线性模型和逻辑回归的多元回归,来说明称为小波修正模型的新方法。给出了计算模拟数据和真实生态数据(物种丰富度的分布和整个德国植物石竹的分布)的结果。将这些结果与广义线性模型和基于广义估计方程的模型进行比较。我们建议使用经过小波修正的模型,特别是作为使用大型数据集进行逻辑回归的方法。

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