An explicit analysis of the entropic penalty in linear programming

06/05/2018
by   Jonathan Weed, et al.
0

Solving linear programs by using entropic penalization has recently attracted new interest in the optimization community, since this strategy forms the basis for the fastest-known algorithms for the optimal transport problem, with many applications in modern large-scale machine learning. Crucial to these applications has been an analysis of how quickly solutions to the penalized program approach true optima to the original linear program. More than 20 years ago, Cominetti and San Martín showed that this convergence is exponentially fast; however, their proof is asymptotic and does not give any indication of how accurately the entropic program approximates the original program for any particular choice of the penalization parameter. We close this long-standing gap in the literature regarding entropic penalization by giving a new proof of the exponential convergence, valid for any linear program. Our proof is non-asymptotic, yields explicit constants, and has the virtue of being extremely simple. We provide matching lower bounds and show that the entropic approach does not lead to a near-linear time approximation scheme for the linear assignment problem.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/27/2020

Limit Laws for Empirical Optimal Solutions in Stochastic Linear Programs

We consider a general linear program in standard form whose right-hand s...
research
01/27/2022

Two-Commodity Flow is Equivalent to Linear Programming under Nearly-Linear Time Reductions

We give a nearly-linear time reduction that encodes any linear program a...
research
06/09/2020

A program for the full axiom of choice

The theory of classical realizability is a framework for the Curry-Howar...
research
02/03/2019

A Delsarte-Style Proof of the Bukh-Cox Bound

The line packing problem is concerned with the optimal packing of points...
research
04/13/2023

Non-asymptotic convergence bounds for Sinkhorn iterates and their gradients: a coupling approach

Computational optimal transport (OT) has recently emerged as a powerful ...
research
05/27/2022

Block-coordinate Frank-Wolfe algorithm and convergence analysis for semi-relaxed optimal transport problem

The optimal transport (OT) problem has been used widely for machine lear...
research
11/21/2018

Breaking symmetries to rescue Sum of Squares: The case of makespan scheduling

The Sum of Squares (SoS) hierarchy gives an automatized technique to cre...

Please sign up or login with your details

Forgot password? Click here to reset