Perez Gonzalez Russell, Rios Lira Armando Javier, Arias Nava Elias Heriberto
This book presents a new augmentation method to eliminate the multicollinearity in datasets that contain several correlated predictor variables. The objective in mind is to reduce the estimation error of the regression coefficients. The main contribution of this work consists in offering a new alternative to eliminate multicollinearity in datasets by using small runs which are added in a sequential manner. The algorithm proposed will indicate the point in which the augmentations have sufficiently contributed to find the true regression model. The procedure is based on addition of new...
This book presents a new augmentation method to eliminate the multicollinearity in datasets that contain several correlated predictor variables. The o...