Optimal Diagonal Preconditioning

成果类型:
Article
署名作者:
Qu, Zhaonan; Gao, Wenzhi; Hinder, Oliver; Ye, Yinyu; Zhou, Zhengyuan
署名单位:
Stanford University; Stanford University; Stanford University; Pennsylvania Commonwealth System of Higher Education (PCSHE); University of Pittsburgh; New York University
刊物名称:
OPERATIONS RESEARCH
ISSN/ISSBN:
0030-364X
DOI:
10.1287/opre.2022.0592
发表日期:
2025
关键词:
algorithm matrices optimization inverse
摘要:
Preconditioning has long been a staple technique in optimization, often applied to reduce the condition number of a matrix and speed up the convergence of algorithms. Although there are many popular preconditioning techniques in practice, most lack guarantees on reductions in condition number, and the degree to which we can improve over existing heuristic preconditioners remains an important question. In this paper, we study the problem of optimal diagonal preconditioning that achieves maximal reduction in the condition number of any full -rank matrix by scaling its rows and/or columns with positive numbers. We first reformulate the problem as a quasiconvex optimization problem and provide a simple algorithm based on bisection. Then, we develop an interior point algorithm with O(log(1=e)) iteration complexity, where each iteration consists of a Newton update based on the Nesterov-Todd direction. Next, we specialize in one-sided optimal diagonal preconditioning problems and demonstrate that they can be formulated as standard dual semidefinite program (SDP) problems. We then develop efficient customized solvers for the SDP approach and study the empirical performance of our optimal diagonal preconditioning procedures through extensive experiments. Our findings suggest that optimal diagonal preconditioners can significantly improve upon existing heuristics -based diagonal preconditioners at reducing condition numbers, and our SDP approach can find such optimal preconditioners efficiently. We also extend our SDP approach to compute optimal mixtures of heuristic preconditioners, which further improves its scalability and applicability.
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