This paper develops two orthogonal contributions to scalable sparse regression for competing risks time-to-event data. First, we study and accelerate the broken adaptive ridge method (BAR), a surrogate ℓ 0-based iteratively reweighted ℓ 2-penalization algorithm that achieves sparsity in its limit, in the context of the Fine-Gray (1999) proportional subdistributional hazards (PSH) model. In particular, we derive a new algorithm for BAR regression, named cycBAR, that performs cyclic update of each coordinate using an explicit thresholding formula. The new cycBAR algorithm effectively avoids fitting multiple reweighted ℓ 2-penalizations and thus yields impressive speedups over the original BAR algorithm. Second, we address a pivotal computatio...
The recent wide adoption of Electronic Medical Records (EMR) presents great opportuni-ties and chall...
This paper aims to provide a sharp excess risk guarantee for learning a sparse linear model without ...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
Computational advancements and cost efficiency over the recent years have made big data readily avai...
Sparse high-dimensional massive sample size (sHDMSS) time-to-event data present multiple challenges ...
Semiparametric joint models of longitudinal and competing risk data are computationally costly, and ...
High-dimensional regression has become an increasingly important topic for many research fields. For...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
In the present paper we propose a new method, the Penalized Adaptive Method (PAM), for a data driven...
Competing risks are omnipresent in administrative records and disease registries. The increasing ava...
AbstractWe present a new SAS macro %pshreg that can be used to fit a proportional subdistribution ha...
The past two decades have witnessed rapid growth in the amount of data available to us. Many fields,...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
The recent wide adoption of Electronic Medical Records (EMR) presents great opportuni-ties and chall...
This paper aims to provide a sharp excess risk guarantee for learning a sparse linear model without ...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
Computational advancements and cost efficiency over the recent years have made big data readily avai...
Sparse high-dimensional massive sample size (sHDMSS) time-to-event data present multiple challenges ...
Semiparametric joint models of longitudinal and competing risk data are computationally costly, and ...
High-dimensional regression has become an increasingly important topic for many research fields. For...
This article presents a novel algorithm that efficiently computes L-1 penalized (lasso) estimates of...
This article presents a novel algorithm that efficiently computes L(1) penalized (lasso) estimates o...
In the present paper we propose a new method, the Penalized Adaptive Method (PAM), for a data driven...
Competing risks are omnipresent in administrative records and disease registries. The increasing ava...
AbstractWe present a new SAS macro %pshreg that can be used to fit a proportional subdistribution ha...
The past two decades have witnessed rapid growth in the amount of data available to us. Many fields,...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
Sparse regression models are an actively burgeoning area of statistical learning research. A subset ...
The recent wide adoption of Electronic Medical Records (EMR) presents great opportuni-ties and chall...
This paper aims to provide a sharp excess risk guarantee for learning a sparse linear model without ...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...