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Mapping beta diversity from space: sparse Generalised Dissimilarity Modelling (SGDM) for analysing high-dimensional data

机译:从空间映射beta多样性:用于分析高维数据的稀疏广义相异性建模(sGDm)

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摘要

Summary1. Spatial patterns of community composition turnover (beta diversity) may be mapped through generalised dissimilarity modelling (GDM). While remote sensing data are adequate to describe these patterns, the often high-dimensional nature of these data poses some analytical challenges, potentially resulting in loss of generality. This may hinder the use of such data for mapping and monitoring beta-diversity patterns.2. This study presents Sparse Generalised Dissimilarity Modelling (SGDM), a methodological framework designed to improve the use of high-dimensional data to predict community turnover with GDM. SGDM consists of a two-stage approach, by first transforming the environmental data with a sparse canonical correlation analysis (SCCA), aimed at dealing with high-dimensional data sets, and secondly fitting the transformed data with GDM. The SCCA penalisation parameters are chosen according to a grid search procedure in order to optimise the predictive performance of a GDM fit on the resulting components. The proposed method was illustrated on a case study with a clear environmental gradient of shrub encroachment following cropland abandonment, and subsequent turnover in the bird communities. Bird community data, collected on 115 plots located along the described gradient, were used to fit composition dissimilarity as a function of several remote sensing data sets, including a time series of Landsat data as well as simulated EnMAP hyperspectral data.3. The proposed approach always outperformed GDM models when fit on high-dimensional data sets. Its usage on low-dimensional data was not consistently advantageous. Models using high-dimensional data, on the other hand, always outperformed those using low-dimensional data, such as single-date multispectral imagery.4. This approach improved the direct use of high-dimensional remote sensing data, such as time-series or hyperspectral imagery, for community dissimilarity modelling, resulting in better performing models. The good performance of models using high-dimensional data sets further highlights the relevance of dense time series and data coming from new and forthcoming satellite sensors for ecological applications such as mapping species beta diversity.
机译:总结1。可以通过广义相异性模型(GDM)映射社区组成转换(β多样性)的空间模式。虽然遥感数据足以描述这些模式,但这些数据通常具有高维特征,因而带来了一些分析难题,有可能导致通用性的丧失。这可能会阻碍将此类数据用于映射和监测β多样性模式。2。这项研究提出了稀疏的通用差异模型(SGDM),一种旨在改善使用高维数据来预测GDM社区流动的方法框架。 SGDM包含两阶段方法,首先使用稀疏规范相关分析(SCCA)转换环境数据,以处理高维数据集,然后将转换后的数据与GDM拟合。根据网格搜索程序选择SCCA惩罚参数,以优化GDM拟合结果组件的预测性能。在案例研究中说明了所提出的方法,该案例研究了农田被弃耕后灌木丛侵占的清晰环境梯度,以及随后鸟类群落的周转。在沿所述坡度分布的115个样地上收集的鸟类群落数据,用于拟合不同遥感数据集(包括Landsat数据的时间序列以及模拟的EnMAP高光谱数据)的成分差异性。3。当适合高维数据集时,所提出的方法总是优于GDM模型。它在低维数据上的使用并非一贯有利。另一方面,使用高维数据的模型总是优于使用低维数据的模型,例如单日期多光谱图像。4。这种方法改进了将高维遥感数据(例如时间序列或高光谱图像)直接用于社区差异建模的能力,从而产生了性能更好的模型。使用高维数据集的模型的良好性能进一步凸显了密集时间序列与来自新的和即将到来的卫星传感器的数据在生态应用(例如绘制物种Beta多样性)中的相关性。

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