We present the results of a simulation study performed to compare the accuracy of a lassotype penalization method and gradient boosting in estimating the baseline hazard function and covariate parameters in discrete survival models. The mean square error results reveal that the lasso-type algorithm performs better in recovering the baseline hazard and covariate parameters. In particular, gradient boosting underestimates the sizes of the parameters and also has a high false positive rate. Similar results are obtained in an application to real-life data
Survival analysis appears in various fields such as medicine, economics, engineering, and business. ...
There are several techniques for fitting sparse survival models to high-dimensional data, arising e....
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...
Several variable selection procedures are available for continuous time-to-event data. However, if ...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
The two fundamental goals in statistical learning are establishing prediction accuracy and discoveri...
This publication is with permission of the rights owner (Sage) freely accessible.We present a new pr...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
Survival analysis focuses on modeling and predicting the time to an event of interest. Many statisti...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Penalization methods have been shown to yield both consistent variable selection and oracle paramete...
This diploma thesis focuses on regularization and variable selection in regres- sion models. Basics ...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Survival analysis appears in various fields such as medicine, economics, engineering, and business. ...
There are several techniques for fitting sparse survival models to high-dimensional data, arising e....
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...
Several variable selection procedures are available for continuous time-to-event data. However, if ...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
The two fundamental goals in statistical learning are establishing prediction accuracy and discoveri...
This publication is with permission of the rights owner (Sage) freely accessible.We present a new pr...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
Survival analysis focuses on modeling and predicting the time to an event of interest. Many statisti...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Penalization methods have been shown to yield both consistent variable selection and oracle paramete...
This diploma thesis focuses on regularization and variable selection in regres- sion models. Basics ...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
Survival analysis appears in various fields such as medicine, economics, engineering, and business. ...
There are several techniques for fitting sparse survival models to high-dimensional data, arising e....
In this thesis, we consider models for survival data with a high-dimensional covariate space. Most m...