PRIMAL - Parametric Simplex Method for Sparse Learning
Implements a unified framework of parametric simplex
method for a variety of sparse learning problems (e.g., Dantzig
selector (for linear regression), sparse quantile regression,
sparse support vector machines, and compressive sensing)
combined with efficient hyper-parameter selection strategies.
The core algorithm is implemented in C++ with Eigen3 support
for portable high performance linear algebra. For more details
about parametric simplex method, see Haotian Pang (2017)
<https://papers.nips.cc/paper/6623-parametric-simplex-method-for-sparse-learning.pdf>.