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Statistical methods for temporal and space–time analysis of community composition data

机译:社区组成数据时空分析的统计方法

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摘要

This review focuses on the analysis of temporal beta diversity, which is the variation in community composition along time in a study area. Temporal beta diversity is measured by the variance of the multivariate community composition time series and that variance can be partitioned using appropriate statistical methods. Some of these methods are classical, such as simple or canonical ordination, whereas others are recent, including the methods of temporal eigenfunction analysis developed for multiscale exploration (i.e. addressing several scales of variation) of univariate or multivariate response data, reviewed, to our knowledge for the first time in this review. These methods are illustrated with ecological data from 13 years of benthic surveys in Chesapeake Bay, USA. The following methods are applied to the Chesapeake data: distance-based Moran's eigenvector maps, asymmetric eigenvector maps, scalogram, variation partitioning, multivariate correlogram, multivariate regression tree, and two-way MANOVA to study temporal and space–time variability. Local (temporal) contributions to beta diversity (LCBD indices) are computed and analysed graphically and by regression against environmental variables, and the role of species in determining the LCBD values is analysed by correlation analysis. A tutorial detailing the analyses in the R language is provided in an appendix.
机译:这篇综述着重于时间β多样性的分析,这是研究区域内社区组成随时间的变化。时间β多样性是通过多元社区组成时间序列的方差来衡量的,可以使用适当的统计方法对方差进行划分。这些方法中的一些是经典方法,例如简单或规范的排序,而另一些则是最近的方法,包括针对单变量或多变量响应数据进行多尺度探索(即解决几个尺度的变化)而开发的时间本征函数分析方法,据我们所知这是该评论中的第一次。美国切萨皮克湾13年底栖动物调查的生态数据说明了这些方法。下列方法应用于切塞皮克犬数据:基于距离的Moran特征向量图,不对称特征向量图,比例尺,变异划分,多元相关图,多元回归树和双向MANOVA,以研究时空变化。通过图形计算并通过针对环境变量进行回归来计算和分析对β多样性(LCBD指数)的局部(时间)贡献,并通过相关分析来分析物种在确定LCBD值中的作用。附录中提供了详细介绍R语言分析的教程。

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