Revisiting Tardos's Framework for Linear Programming: Faster Exact Solutions using Approximate Solvers
Daniel Dadush, Bento Natura, L\'aszl\'o A. V\'egh

TL;DR
This paper extends Tardos's LP solving framework by incorporating approximate solvers, achieving faster exact solutions that depend on condition numbers and recent algorithmic advances.
Contribution
It introduces a novel framework that replaces exact LP solves with approximate ones, enabling faster exact solutions based on recent approximate LP algorithms.
Findings
Achieves faster exact LP solutions using approximate solvers.
Outperforms previous interior point methods in runtime.
Leverages recent algorithmic progress for approximate linear programming.
Abstract
In breakthrough work, Tardos (Oper. Res. '86) gave a proximity based framework for solving linear programming (LP) in time depending only on the constraint matrix in the bit complexity model. In Tardos's framework, one reduces solving the LP , , , , to solving LPs in having small integer coefficient objectives and right-hand sides using any exact LP algorithm. This gives rise to an LP algorithm in time poly, where is the largest subdeterminant of . A significant extension to the real model of computation was given by Vavasis and Ye (Math. Prog. '96), giving a specialized interior point method that runs in time poly, depending on Stewart's , a well-studied condition number. In this work, we extend Tardos's original framework to…
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