In quantile regression models, numerous penalization methods have been developed to deal with ordinary least-squares method problems. Such methods are ridge penalized quantile regression, lasso penalized quantile regression, and elastic net penalized quantile regression which are used for variable selection and regularization and deals with the multicollinearity problem when it exists between the predictor variables. However, the variables of interest are often represented through time series processes, in which such time series data are often non-stationary and non-linear, which leads to poor accuracy of the resultant regression models and hence results with less reliability. The EMD-EnetQR method is proposed to address this issue, which c...
<p>We consider estimating multitask quantile regression under the transnormal model, with focus on h...
More attention has been given to regularization methods in the last two decades as a result of exiti...
Using the Pairwise Absolute Clustering and Sparsity (PACS) penalty, we proposed the regularized quan...
The importance of robust variable selection and regularization as solutions to the collinearity infl...
Regression regularization methods are drawing increasing attention from statisticians for more frequ...
The coefficients of a quantile regression model are one-to-one functions of the order of the quantil...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
Quantile regression extends the statistical analysis of the response models beyond conditional means...
Empirical mode decomposition (EMD) is particularly useful in analyzing nonstationary and nonlinear t...
In ordinary quantile regression, quantiles of different order are estimated one at a time. An altern...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
The work in this paper shows intensive empirical experiments using 13 datasets to understand the reg...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
<p>We consider estimating multitask quantile regression under the transnormal model, with focus on h...
More attention has been given to regularization methods in the last two decades as a result of exiti...
Using the Pairwise Absolute Clustering and Sparsity (PACS) penalty, we proposed the regularized quan...
The importance of robust variable selection and regularization as solutions to the collinearity infl...
Regression regularization methods are drawing increasing attention from statisticians for more frequ...
The coefficients of a quantile regression model are one-to-one functions of the order of the quantil...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
Quantile regression extends the statistical analysis of the response models beyond conditional means...
Empirical mode decomposition (EMD) is particularly useful in analyzing nonstationary and nonlinear t...
In ordinary quantile regression, quantiles of different order are estimated one at a time. An altern...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
The work in this paper shows intensive empirical experiments using 13 datasets to understand the reg...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
<p>We consider estimating multitask quantile regression under the transnormal model, with focus on h...
More attention has been given to regularization methods in the last two decades as a result of exiti...
Using the Pairwise Absolute Clustering and Sparsity (PACS) penalty, we proposed the regularized quan...