偏最小二乘回归
统计
主成分分析
回归
回归分析
主成分回归
样本量测定
差异(会计)
数学
样品(材料)
变量
回归诊断
线性回归
生态学
计量经济学
生物
多项式回归
化学
会计
色谱法
业务
作者
Luis M. Carrascal,Ismael Galván,Óscar Gordo
出处
期刊:Oikos
[Wiley]
日期:2009-01-15
卷期号:118 (5): 681-690
被引量:670
标识
DOI:10.1111/j.1600-0706.2008.16881.x
摘要
This paper briefly presents the aims, requirements and results of partial least squares regression analysis (PLSR), and its potential utility in ecological studies. This statistical technique is particularly well suited to analyzing a large array of related predictor variables (i.e. not truly independent), with a sample size not large enough compared to the number of independent variables, and in cases in which an attempt is made to approach complex phenomena or syndromes that must be defined as a combination of several variables obtained independently. A simulation experiment is carried out to compare this technique with multiple regression (MR) and with a combination of principal component analysis and multiple regression (PCA+MR), varying the number of predictor variables and sample sizes. PLSR models explained a similar amount of variance to those results obtained by MR and PCA+MR. However, PLSR was more reliable than other techniques when identifying relevant variables and their magnitudes of influence, especially in cases of small sample size and low tolerance. Finally, we present one example of PLSR to illustrate its application and interpretation in ecology.
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