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Understanding community structure: a data-driven multivariate approach

机译:了解社区结构:一种数据驱动的多元方法

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Habitat is known to influence community structure yet, because these effects are complex, elucidating these relationships has proven difficult. Multiple aspects of vegetation architecture or plant species composition, for example, may simultaneously affect animal communities and their constituent species. Many traditional statistical approaches (e.g., regression) have difficulty in handling large numbers of collinear variables. On the other hand, multivariate methods, such as ordination, are well suited to handle these large datasets, but they have primarily been used in ecology as descriptive techniques, and less frequently as a data reduction tool for predictor variables in regression. Here, I employ a multivariate approach for variable reduction of both the predictor and response variables to investigate the influences of vegetation architecture and plant species on community composition in spiders using multiple regression. This allows retention of the information in the original dataset while producing statistically tractable variables for use in further analyses. I used nonmetric multidimensional scaling to reduce the number of variables for predictor (habitat architecture and plant species) and response (spider species) data matrices, and used these new variables in multiple regression analyses. These axes can be interpreted based on their correlations with the original variables, allowing for recovery of biologically meaningful information from regressions. Consequently, the important variables are determined by the data themselves, rather than by a priori assumptions of the researcher. Contrary to expectations based on previous work in spiders and other animals, plant species composition explained more variation in spider communities than did habitat architecture, and was also a stronger predictor of other community structure variables (overall abundance, species richness, and species diversity). I discuss possible ecological explanations for these results, and the advantages of the proposed method.
机译:众所周知,栖息地会影响社区结构,因为这些影响是复杂的,因此阐明这些关系非常困难。例如,植被建筑或植物物种组成的多个方面可能同时影响动物群落及其组成物种。许多传统的统计方法(例如回归分析)在处理大量共线变量时有困难。另一方面,诸如排序之类的多变量方法非常适合处理这些大型数据集,但它们最初已在生态学中用作描述性技术,而很少用作回归中预测变量的数据缩减工具。在这里,我采用多变量方法对预测变量和响应变量进行减量化,以使用多元回归研究植被结构和植物物种对蜘蛛群落组成的影响。这允许在原始数据集中保留信息,同时生成统计上易于处理的变量以用于进一步分析。我使用非度量多维标度来减少用于预测变量(栖息地结构和植物物种)和响应(蜘蛛物种)数据矩阵的变量数量,并将这些新变量用于多元回归分析。可以根据它们与原始变量的相关性来解释这些轴,从而可以从回归中恢复具有生物学意义的信息。因此,重要变量是由数据本身确定的,而不是由研究人员的先验假设确定的。与先前对蜘蛛和其他动物所做的工作所期望的相反,植物物种组成解释了蜘蛛群落比栖息地构造更多的变异,并且也是其他群落结构变量(总体丰度,物种丰富度和物种多样性)的更强预测因子。我讨论了这些结果的可能的生态学解释,以及所提出方法的优点。

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