README.md

splitFeas

Majorization-minimization for solving split feasibility problems

Description

This package provides majorization-minimiation (MM) algorithms for solving split feasibility problems. These algorithms were originally proposed for constrained generalized linear model regression [1], and are implemented generally to solve split feasibility problems as detailed in [2]. The goal is to find a point $x \in C$ such that $h(x) \in D$; the sets $C$ and $D$ may be intersections of several closed sets, and need not be convex. The mapping $h$ need not be linear.

Installation

The package can be installed directly from github using the devtools package, which can easily be installed using the command install.packages("devtools"). See https://github.com/hadley/devtools for more details.

To install splitFeas, run the following:

library(devtools)
install_github("jasonxu90/splitFeas")

References

  1. Xu J, Chi EC, Lange K (2017). "Generalized Linear Model Regression under Distance-to-set Penalties," to appear, Neural Information Processing Systems.

  2. Xu J, Chi EC, Yang M, Lange K (2017). "A Majorization-minimization Algorithm for Split Feasibility Problems," arXiv preprint, https://arxiv.org/abs/1612.05614.



jasonxu90/splitFeas documentation built on May 31, 2019, 8:43 a.m.