Strongly polynomial algorithm for a class of minimum-cost flow problems with separable convex objectives
Laszlo A. Vegh

TL;DR
This paper presents strongly polynomial algorithms for a class of convex quadratic minimum-cost flow problems and related market equilibrium models, resolving several open questions in the field.
Contribution
It introduces a unified framework for strongly polynomial algorithms applicable to convex quadratic flows and Fisher market equilibria, addressing previously open problems.
Findings
Strongly polynomial algorithm for convex quadratic minimum-cost flow.
Algorithms for Fisher markets with linear and spending constraint utilities.
Resolution of open problems in market equilibrium computation.
Abstract
A well-studied nonlinear extension of the minimum-cost flow problem is to minimize the objective over feasible flows , where on every arc of the network, is a convex function. We give a strongly polynomial algorithm for the case when all 's are convex quadratic functions, settling an open problem raised e.g. by Hochbaum [1994]. We also give strongly polynomial algorithms for computing market equilibria in Fisher markets with linear utilities and with spending constraint utilities, that can be formulated in this framework (see Shmyrev [2009], Devanur et al. [2011]). For the latter class this resolves an open question raised by Vazirani [2010]. The running time is for quadratic costs, for Fisher's markets with linear utilities and for spending constraint…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Optimization and Search Problems · Markov Chains and Monte Carlo Methods
