1. Tests of significance of the individual canonical axes in redundancy analysis allow researchers to determine which of the axes represent variation that can be distinguished from random. Variation along the significant axes can be mapped, used to draw biplots or interpreted through subsequent analyses, whilst the nonsignificant axes may be dropped from further consideration. 2. Three methods have been implemented in computer programs to test the significance of the canonical axes; they are compared in this paper. The simultaneous test of all individual canonical axes, which is appealing because of its simplicity, produced incorrect (highly inflated) levels of type I error for the axes following those corresponding to true relationships in...
Canonical Correlation Analysis (CCA) can be conceptualized as a multivariate regression involving mu...
The focus of the present work are Structural Equation Models in the Redundancy Analysis framework (S...
Canonical correlations analysis (CCA) is an exploratory statistical method to highlight correlations...
1. Tests of significance of the individual canonical axes in redundancy analysis allow researchers t...
Canonical correlation analysis is a powerful statistical method subsuming other parametric significa...
A component method is presented maximiz ing Stewart and Love's redundancy index. Relationships ...
A computer program, written in BASIC, is described which com-putes structure correlations, redundanc...
A non-linear version of redundancy analysis is introduced. The technique is called REDUNDALS. It is ...
Relationships between the original definition of redundancy index first proposed by Stewart and Love...
This paper extends the biplot technique to canonical correlation analysis and redundancy analysis. T...
Omnibus tests of significance in contingency tables use statistics of the chi-square type. When the ...
Canonical correlation analysis is an extremely useful technique, especially in biomedical investigat...
biplot, canonical correlation analysis, canonical weight, interbattery factor analysis, partial anal...
Redundancy coefficients and p-values of correlations between edaphic factors and both axes of dbRDA ...
Canonical correlation analysis (CCA) has become a key tool for population neuroimaging, allowing inv...
Canonical Correlation Analysis (CCA) can be conceptualized as a multivariate regression involving mu...
The focus of the present work are Structural Equation Models in the Redundancy Analysis framework (S...
Canonical correlations analysis (CCA) is an exploratory statistical method to highlight correlations...
1. Tests of significance of the individual canonical axes in redundancy analysis allow researchers t...
Canonical correlation analysis is a powerful statistical method subsuming other parametric significa...
A component method is presented maximiz ing Stewart and Love's redundancy index. Relationships ...
A computer program, written in BASIC, is described which com-putes structure correlations, redundanc...
A non-linear version of redundancy analysis is introduced. The technique is called REDUNDALS. It is ...
Relationships between the original definition of redundancy index first proposed by Stewart and Love...
This paper extends the biplot technique to canonical correlation analysis and redundancy analysis. T...
Omnibus tests of significance in contingency tables use statistics of the chi-square type. When the ...
Canonical correlation analysis is an extremely useful technique, especially in biomedical investigat...
biplot, canonical correlation analysis, canonical weight, interbattery factor analysis, partial anal...
Redundancy coefficients and p-values of correlations between edaphic factors and both axes of dbRDA ...
Canonical correlation analysis (CCA) has become a key tool for population neuroimaging, allowing inv...
Canonical Correlation Analysis (CCA) can be conceptualized as a multivariate regression involving mu...
The focus of the present work are Structural Equation Models in the Redundancy Analysis framework (S...
Canonical correlations analysis (CCA) is an exploratory statistical method to highlight correlations...