Fourth-corner correlation is a score test statistic in a log-linear trait–environment model that is useful in permutation testing

被引:0
作者
Cajo J. F. ter Braak
机构
[1] Wageningen University & Research,Biometris
来源
Environmental and Ecological Statistics | 2017年 / 24卷
关键词
Community ecology; Correspondence analysis; Fourth-corner; Permutation test; Score test statistic; Trait–environment association;
D O I
暂无
中图分类号
学科分类号
摘要
Ecologists wish to understand the role of traits of species in determining where each species occurs in the environment. For this, they wish to detect associations between species traits and environmental variables from three data tables, species count data from sites with associated environmental data and species trait data from data bases. These three tables leave a missing part, the fourth-corner. The fourth-corner correlations between quantitative traits and environmental variables, heuristically proposed 20 years ago, fill this corner. Generalized linear (mixed) models have been proposed more recently as a model-based alternative. This paper shows that the squared fourth-corner correlation times the total count is precisely the score test statistic for testing the linear-by-linear interaction in a Poisson log-linear model that also contains species and sites as main effects. For multiple traits and environmental variables, the score test statistic is proportional to the total inertia of a doubly constrained correspondence analysis. When the count data are over-dispersed compared to the Poisson or when there are other deviations from the model such as unobserved traits or environmental variables that interact with the observed ones, the score test statistic does not have the usual chi-square distribution. For these types of deviations, row- and column-based permutation methods (and their sequential combination) are proposed to control the type I error without undue loss of power (unless no deviation is present), as illustrated in a small simulation study. The issues for valid statistical testing are illustrated using the well-known Dutch Dune Meadow data set.
引用
收藏
页码:219 / 242
页数:23
相关论文
共 100 条
[1]  
Ackerly D(2002)Leaf size, specific leaf area and microhabitat distribution of chaparral woody plants: contrasting patterns in species level and community level analyses Oecologia 130 449-457
[2]  
Knight C(2001)Rao’s score, Neyman’s C( J Stat Plan Inference 97 9-44
[3]  
Weiss S(2014)) and Silvey’s LM tests: an essay on historical developments and some new results Methods Ecol Evol 5 344-352
[4]  
Barton K(2015)The fourth-corner solution–using predictive models to understand how species traits interact with the environment J Stat Softw 61 1-16
[5]  
Starmer K(1996)mdscore: an R package to compute improved score tests in generalized linear models Environ Ecol Stat 3 143-166
[6]  
Bera AK(2007)Matching species traits to environmental variables: a new three-table ordination method J Stat Softw 22 1-20
[7]  
Bilias Y(2008)The ade4 package: implementing the duality diagram for ecologists Ecology 89 3400-3412
[8]  
Brown AM(2014)Testing the species traits-environment relationships: the fourth-corner problem revisited Ecology 95 14-21
[9]  
Warton DI(1998)Combining the fourth-corner and the RLQ methods for assessing trait responses to environmental variation Biometrika 85 689-700
[10]  
Andrew NR(2010)Generalised bilinear regression Ann Stat 38 3782-3810