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Application of canonical discriminant analysis, principal component analysis, and canonical correlation analysis as tools for evaluating differences in pasture botanical composition

机译:规范判别分析,主成分分析和规范相关分析作为评估牧场植物成分差异的工具的应用

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Abstract The application of three multivariate analysis techniques (canonical discriminant analysis (CDA), principal component analysis (PCA), and canonical correlation analysis (CCA)) for evaluation of pasture botanical composition data is illustrated and discussed. CDA and PCA were used to describe differences in pasture botanical composition for different microsites within a pasture near Palmerston North, New Zealand. CCA could not be validly applied to this data set because a sampling strategy inappropriate for CCA had been used to collect the data. However, CCA is conceptually ideal for determining association between two groups of variables and CCA was used for a second data set from the Hawkes Bay region to establish association between differences in pasture botanical composition and differences in environmental variables. CCA identified a transition from white clover (Trifolium repens L.) to subterranean clover {Trifolium subterraneum L.) presence associated with decreasing rainfall, and a simila...
机译:摘要阐述并讨论了三种多元分析技术(规范判别分析(CDA),主成分分析(PCA)和规范相关分析(CCA))在牧场植物成分数据评估中的应用。 CDA和PCA用于描述新西兰北帕默斯顿附近牧场内不同地点的牧场植物组成的差异。 CCA无法有效地应用于此数据集,因为已经使用了不适合CCA的采样策略来收集数据。但是,CCA在概念上是确定两组变量之间关联的理想选择,CCA用于霍克斯湾地区的第二个数据集,以建立牧场植物成分差异与环境变量差异之间的关联。 CCA确定了白三叶草(Trifolium repens L.)到地下三叶草(Trifolium subterraneum L.)的存在与降雨减少相关的过渡,并且类似的...

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