Variable selection is one of the important practical issues for many scientific engineers. Although the PLS (partial least squares) regression combined with the VIP (variable importance in the projection) scores is often used when the multicollinearity, is present among variables, there are few guidelines about its uses as well as its performance. The purpose of this paper is to explore the nature of the VIP method and to compare with other methods through computer simulation experiments. We design 108 experiments where observations are generated from true models considering four factors-the proportion of the number of relevant predictors, the magnitude of correlations between predictors, the structure of regression coefficients, and the ma...
A linear regression model defines a linear relationship between two or more random variables. The ra...
A challenging problem in the analysis of high-dimensional data is variable selection. In this study...
Abstract:It has been widely known that the multicollinearity in the independent variable sets is har...
-The focus of the present paper is to propose and discuss different procedures for performing variab...
-The focus of the present paper is to propose and discuss different procedures for performing variab...
The focus of the present paper is to propose and discuss different procedures for performing variabl...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
A linear regression model defines a linear relationship between two or more random variables. The ra...
A challenging problem in the analysis of high-dimensional data is variable selection. In this study...
Abstract:It has been widely known that the multicollinearity in the independent variable sets is har...
-The focus of the present paper is to propose and discuss different procedures for performing variab...
-The focus of the present paper is to propose and discuss different procedures for performing variab...
The focus of the present paper is to propose and discuss different procedures for performing variabl...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Multivariate and multiblock data analysis involves useful methodologies for analyzing large data set...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
A linear regression model defines a linear relationship between two or more random variables. The ra...
A challenging problem in the analysis of high-dimensional data is variable selection. In this study...
Abstract:It has been widely known that the multicollinearity in the independent variable sets is har...