Advantages of the use of multivariate commonality analysis are discussed and a small data set is used to illustrate the analysis and as a model to enable readers to conduct such an analysis. A noteworthy advantage of commonality analysis is that commonality honors the relationships among variables by determining the degree to which predictors in a set share variance with the criterion variables. Since commonality indicates the extent of.overlap of the variables, it is especially useful in the behavioral sciences where predictor variables are often correlated with each other. Commonality also reinforces the recognition that canonical analysis is the most general case of parametric significance testing. The disadvantage that there are no stat...
The potential inflation of correlations between measures assessed via the same method (e.g., self-re...
Simple quantitative evaluations of isolate behavioral elements (i.e. frequencies, durations, per cen...
International audienceDirect gradient analyses in spatial genetics provide unique opportunities to d...
Commonality analysis may be used as an adjunct to general linear methods as a means of determining t...
Canonical correlation analysis is the most general linear model subsuming all other univariate and m...
Commonality analysis is a method of decomposing the R squared in a multiple regression analysis into...
Multiple regression is a widely used technique to study complex interrelationships among people, in...
Canonical correlation analysis is the most general linear model subsuming all other univariate and m...
When it comes to multiple linear regression analysis (MLR), it is common for social and behavioral s...
<p>Commonality analysis of Study #2a and #2b and bootstrap-based comparisons among the partitions.</...
When approximately the same amount of variance can be reproduced with a larger variable set and a sm...
Psychological research often involves analysis of an I x J contingency table consisting of the resp...
Although it is simple to determine whether multivariate group differences are statistically signific...
Direct gradient analyses in spatial genetics provide unique opportunities to describe the inherent c...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
The potential inflation of correlations between measures assessed via the same method (e.g., self-re...
Simple quantitative evaluations of isolate behavioral elements (i.e. frequencies, durations, per cen...
International audienceDirect gradient analyses in spatial genetics provide unique opportunities to d...
Commonality analysis may be used as an adjunct to general linear methods as a means of determining t...
Canonical correlation analysis is the most general linear model subsuming all other univariate and m...
Commonality analysis is a method of decomposing the R squared in a multiple regression analysis into...
Multiple regression is a widely used technique to study complex interrelationships among people, in...
Canonical correlation analysis is the most general linear model subsuming all other univariate and m...
When it comes to multiple linear regression analysis (MLR), it is common for social and behavioral s...
<p>Commonality analysis of Study #2a and #2b and bootstrap-based comparisons among the partitions.</...
When approximately the same amount of variance can be reproduced with a larger variable set and a sm...
Psychological research often involves analysis of an I x J contingency table consisting of the resp...
Although it is simple to determine whether multivariate group differences are statistically signific...
Direct gradient analyses in spatial genetics provide unique opportunities to describe the inherent c...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
The potential inflation of correlations between measures assessed via the same method (e.g., self-re...
Simple quantitative evaluations of isolate behavioral elements (i.e. frequencies, durations, per cen...
International audienceDirect gradient analyses in spatial genetics provide unique opportunities to d...