ICML2023

Solving Linear Programs with Fast Online Learning Algorithms

Wenzhi Gao, Dongdong Ge, Chunlin Sun, Yinyu Ye

被引用 6 次

摘要

This paper presents fast first-order methods for solving linear programs (LPs) approximately. We adapt online linear programming algorithms to offline LPs and obtain algorithms that avoid any matrix multiplication. We also introduce a variable-duplication technique that copies each variable KK times and reduces the optimality gap and constraint violation by a factor of K\sqrt{K}. Furthermore, we show how online algorithms can be effectively integrated into sifting, a column generation scheme for large-scale LPs. Numerical experiments demonstrate that our methods can serve as either an approximate direct solver, or an initialization subroutine for exact LP solving.