APML0 - Augmented and Penalized Minimization Method L0
Fit linear, logistic and Cox models regularized with L0,
lasso (L1), elastic-net (L1 and L2), or net (L1 and Laplacian)
penalty, and their adaptive forms, such as adaptive lasso /
elastic-net and net adjusting for signs of linked coefficients.
It solves the L0 penalty problem by simultaneously selecting
regularization parameters and performing hard-thresholding or
selecting the number of non-zeros. This augmented and penalized
minimization method provides an approximation solution to the
L0 penalty problem, but runs as fast as L1 regularization. The
package uses a one-step coordinate descent algorithm and runs
extremely fast by taking into account the sparsity structure of
coefficients. It can handle very high dimensional data and has
superior selection performance.