Dominance analysis (DA) is a method used to compare the relative importance of predictors in multiple regression. DA determines the dominance of one predictor over another by comparing their additional R2 contributions across all subset models. In this article DA is extended to multivariate models by identifying a minimal set of criteria for an appropriate generalization of R2 to the case of multiple response variables. The DA results obtained by univariate regression (with each criterion separately) are analytically compared with results obtained by multivariate DA and illustrated with an example. It is shown that univariate dominance does not necessarily imply multivariate dominance (and vice versa), and it is recommended that researchers...
Social science researchers use multiple regression and/or discriminant analysis to predict, explain,...
Moderated regression is widely used to examine differential prediction by race or gender. When using...
This article reports the results of a Monte Carlo simulation comparing four differ-ent indices of re...
Dominance analysis (DA) is a method used to compare the relative importance of predictors in multipl...
132 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.Dominance analysis is a proce...
Family researchers are often interested in the importance of variables to be included in the predict...
Abstract:- This paper, advocates on a broader use of relative prominence keys as an appendage to mul...
Lindeman et al. [12] provide a unique solution to the relative importance of correlated predictors i...
This study examines the performance of eight methods of predictor importance under varied correlatio...
Conventional measures of predictor importance in linear models are applicable only when the assumpti...
This master s thesis investigates how well a generalized mixed model fits different dominance data s...
The five articles in this special issue of Organizational Research Methods focus on various measures...
A new method is proposed for comparing all predictors in a multiple regression model. This method ge...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
Analysis of data sets that involve large numbers of variables usually entails some type of model fit...
Social science researchers use multiple regression and/or discriminant analysis to predict, explain,...
Moderated regression is widely used to examine differential prediction by race or gender. When using...
This article reports the results of a Monte Carlo simulation comparing four differ-ent indices of re...
Dominance analysis (DA) is a method used to compare the relative importance of predictors in multipl...
132 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.Dominance analysis is a proce...
Family researchers are often interested in the importance of variables to be included in the predict...
Abstract:- This paper, advocates on a broader use of relative prominence keys as an appendage to mul...
Lindeman et al. [12] provide a unique solution to the relative importance of correlated predictors i...
This study examines the performance of eight methods of predictor importance under varied correlatio...
Conventional measures of predictor importance in linear models are applicable only when the assumpti...
This master s thesis investigates how well a generalized mixed model fits different dominance data s...
The five articles in this special issue of Organizational Research Methods focus on various measures...
A new method is proposed for comparing all predictors in a multiple regression model. This method ge...
While multicollinearity may increase the difficulty of interpreting multiple regression results, it ...
Analysis of data sets that involve large numbers of variables usually entails some type of model fit...
Social science researchers use multiple regression and/or discriminant analysis to predict, explain,...
Moderated regression is widely used to examine differential prediction by race or gender. When using...
This article reports the results of a Monte Carlo simulation comparing four differ-ent indices of re...