计算无正规化最优传输的随机方法及其收敛性分析

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-06-20 DOI:10.1007/s10915-024-02570-w
Yue Xie, Zhongjian Wang, Zhiwen Zhang
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摘要

通过离散化,最优运输(OT)问题可以简化为线性规划(LP)问题。在本文中,我们引入了随机块坐标下降(RBCD)方法来直接解决这个 LP 问题。我们的方法是将潜在的大规模优化问题限制为通过随机选择的工作集构建的小型 LP 子问题。通过使用随机高斯-南韦尔-q 规则来选择这些工作集,我们为 vanilla 版本的(\({\textbf {RBCD}}_0\) )配备了几乎确定的收敛性和线性收敛率,以解决一般的标准 LP 问题。为了进一步提高 (\({\textbf {RBCD}}_0\)) 方法的效率,我们探索了加时赛问题中的特殊约束结构,并利用线性系统理论提出了几种完善随机工作集选择和加速 vanilla 方法的方法。我们还讨论了 RBCD 方法的非精确版本。我们的初步数值实验表明,在寻求精度相对较高的解时,加速随机块坐标下降(ARBCD)方法与其他求解器(包括稳定 Sinkhorn 算法)相比效果良好,并且具有节省内存的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Randomized Methods for Computing Optimal Transport Without Regularization and Their Convergence Analysis

The optimal transport (OT) problem can be reduced to a linear programming (LP) problem through discretization. In this paper, we introduced the random block coordinate descent (RBCD) methods to directly solve this LP problem. Our approach involves restricting the potentially large-scale optimization problem to small LP subproblems constructed via randomly chosen working sets. By using a random Gauss-Southwell-q rule to select these working sets, we equip the vanilla version of (\({\textbf {RBCD}}_0\)) with almost sure convergence and a linear convergence rate to solve general standard LP problems. To further improve the efficiency of the (\({\textbf {RBCD}}_0\)) method, we explore the special structure of constraints in the OT problems and leverage the theory of linear systems to propose several approaches for refining the random working set selection and accelerating the vanilla method. Inexact versions of the RBCD methods are also discussed. Our preliminary numerical experiments demonstrate that the accelerated random block coordinate descent (ARBCD) method compares well with other solvers including stabilized Sinkhorn’s algorithm when seeking solutions with relatively high accuracy, and offers the advantage of saving memory.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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