The Role of Level-Set Geometry on the Performance of PDHG for Conic Linear Optimization
Zikai Xiong, Robert M. Freund

TL;DR
This paper investigates how the geometry of level sets affects the convergence of the rPDHG algorithm in large-scale conic linear optimization, proposing transformations to improve performance.
Contribution
It establishes a theoretical link between level-set geometry and convergence rates, and introduces rescaling techniques to enhance rPDHG's efficiency.
Findings
Rescaling improves convergence rates in practice.
Geometry of level sets influences algorithm performance.
Transformations can accelerate high-accuracy solutions.
Abstract
We consider solving huge-scale instances of (convex) conic linear optimization problems, at the scale where matrix-factorization-free methods are attractive or necessary. The restarted primal-dual hybrid gradient method (rPDHG) -- with heuristic enhancements and GPU implementation -- has been very successful in solving huge-scale linear programming (LP) problems; however its application to more general conic convex optimization problems is not so well-studied. We analyze the theoretical and practical performance of rPDHG for general (convex) conic linear optimization, and LP as a special case thereof. We show a relationship between the geometry of the primal-dual (sub-)level sets and the convergence rate of rPDHG. Specifically, we prove a bound on the convergence rate of rPDHG that improves when there is a primal-dual (sub-)level set for which (i)…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Advanced Optimization Algorithms Research
