flare - Family of Lasso Regression
Provide the implementation of a family of Lasso variants
including Dantzig Selector, LAD Lasso, SQRT Lasso, Lq Lasso for
estimating high dimensional sparse linear model. We adopt the
alternating direction method of multipliers and convert the
original optimization problem into a sequential L1 penalized
least square minimization problem, which can be efficiently
solved by linearization algorithm. A multi-stage screening
approach is adopted for further acceleration. Besides the
sparse linear model estimation, we also provide the extension
of these Lasso variants to sparse Gaussian graphical model
estimation including TIGER and CLIME using either L1 or
adaptive penalty. Missing values can be tolerated for Dantzig
selector and CLIME. The computation is memory-optimized using
the sparse matrix output. For more information, please refer to
<https://www.jmlr.org/papers/volume16/li15a/li15a.pdf>.