The "least absolute shrinkage and selection operator" ('lasso') has been widely used in regression shrinkage and selection. We extend its application to the regression model with autoregressive errors. Two types of lasso estimators are carefully studied. The first is similar to the traditional lasso estimator with only two tuning parameters (one for regression coefficients and the other for autoregression coefficients). These tuning parameters can be easily calculated via a data-driven method, but the resulting lasso estimator may not be fully efficient. To overcome this limitation, we propose a second lasso estimator which uses different tuning parameters for each coefficient. We show that this modified lasso can produce the estimator as e...
Over recent years, the state-of-the-art lasso and adaptive lasso have aquired remarkable considerati...
Regression models are a form of supervised learning methods that are important for machine learning,...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
The least absolute shrinkage and selection operator ('lasso') has been widely used in regr...
Abstract: The least absolute shrinkage and selection operator (lasso) has been widely used in regres...
The least absolute deviation (LAD) regression is a useful method for robust regression, and the leas...
The Lasso is a popular and computationally efficient procedure for automatically performing both var...
[[abstract]]A subset selection method is proposed for vector autoregressive (VAR) processes using th...
The least absolute selection and shrinkage operator (LASSO) is a method of estimation for linear mod...
The abundance of available digital big data has created new challenges in identifying relevant varia...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
The varying coefficient model is a useful extension of the linear regression model. Nevertheless, ho...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
grantor: University of TorontoThe maximum likelihood method is traditionally used in estim...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
Over recent years, the state-of-the-art lasso and adaptive lasso have aquired remarkable considerati...
Regression models are a form of supervised learning methods that are important for machine learning,...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
The least absolute shrinkage and selection operator ('lasso') has been widely used in regr...
Abstract: The least absolute shrinkage and selection operator (lasso) has been widely used in regres...
The least absolute deviation (LAD) regression is a useful method for robust regression, and the leas...
The Lasso is a popular and computationally efficient procedure for automatically performing both var...
[[abstract]]A subset selection method is proposed for vector autoregressive (VAR) processes using th...
The least absolute selection and shrinkage operator (LASSO) is a method of estimation for linear mod...
The abundance of available digital big data has created new challenges in identifying relevant varia...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
The varying coefficient model is a useful extension of the linear regression model. Nevertheless, ho...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
grantor: University of TorontoThe maximum likelihood method is traditionally used in estim...
The lasso procedure is an estimator-shrinkage and variable selection method. This paper shows that t...
Over recent years, the state-of-the-art lasso and adaptive lasso have aquired remarkable considerati...
Regression models are a form of supervised learning methods that are important for machine learning,...
We provide a principled way for investigators to analyze randomized experiments when the number of c...