Principal covariates regression (PCovR) allows one to deal with the interpretational and technical problems associated with running ordinary regression using many predictor variables. In PCovR, the predictor variables are reduced to a limited number of components, and simultaneously, criterion variables are regressed on these components. By means of a weighting parameter, users can flexibly choose how much they want to emphasize reconstruction and prediction. However, when datasets contain many criterion variables, PCovR users face new interpretational problems, because many regression weights will be obtained and because some criteria might be unrelated to the predictors. We therefore propose PCovR2, which extends PCovR by also reducing th...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
In the behavioral sciences, researchers often link a criterion to multiple predictors, using multipl...
In the behavioral sciences, researchers often link a criterion to multiple predictors, using multipl...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
Principal covariates regression (PCovR) allows one to deal with the interpretational and technical p...
In the behavioral sciences, researchers often link a criterion to multiple predictors, using multipl...
In the behavioral sciences, researchers often link a criterion to multiple predictors, using multipl...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
In this article, we present PCovR, an R package for performing principal covariates regression (PCov...