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RAEN (version 0.2)

Random Approximate Elastic Net (RAEN) Variable Selection Method

Description

The Proportional Subdistribution Hazard (PSH) model has been popular for estimating the effects of the covariates on the cause of interest in Competing Risks analysis. The fast accumulation of large scale datasets has posed a challenge to classical statistical methods. Current penalized variable selection methods show unsatisfactory performance in ultra-high dimensional data. We propose a novel method, the Random Approximate Elastic Net (RAEN), with a robust and generalized solution to the variable selection problem for the PSH model. Our method shows improved sensitivity for variable selection compared with current methods.

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Version

Install

install.packages('RAEN')

Monthly Downloads

20

Version

0.2

License

GPL (>= 2)

Issues

Pull Requests

Stars

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Maintainer

Han Sun

Last Published

February 21st, 2021

Functions in RAEN (0.2)

r2select

Variable Selection with the candidate pool
RAEN-Package

The Robust and Generalized Ensemble Approach for Variable Selection in High Dimensions
RAEN

Random Ensemble Variable Selection for High Dimensional Data
toydata

Toy data for demonstration
deCorr

De-correlating variables
grpselect

grpselect
lossTrans

Linear Approximation of the object function