A Generalized Approximation Framework for Fractional Network Flow and Packing Problems
December 16, 2016 Β· Declared Dead Β· π Mathematical Methods of Operations Research
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Authors
Michael Holzhauser, Sven O. Krumke
arXiv ID
1612.05474
Category
cs.DS: Data Structures & Algorithms
Citations
1
Venue
Mathematical Methods of Operations Research
Last Checked
4 months ago
Abstract
We generalize the fractional packing framework of Garg and Koenemann to the case of linear fractional packing problems over polyhedral cones. More precisely, we provide approximation algorithms for problems of the form $\max\{c^T x : Ax \leq b, x \in C \}$, where the matrix $A$ contains no negative entries and $C$ is a cone that is generated by a finite set $S$ of non-negative vectors. While the cone is allowed to require an exponential-sized representation, we assume that we can access it via one of three types of oracles. For each of these oracles, we present positive results for the approximability of the packing problem. In contrast to other frameworks, the presented one allows the use of arbitrary linear objective functions and can be applied to a large class of packing problems without much effort. In particular, our framework instantly allows to derive fast and simple fully polynomial-time approximation algorithms (FPTASs) for a large set of network flow problems, such as budget-constrained versions of traditional network flows, multicommodity flows, or generalized flows. Some of these FPTASs represent the first ones of their kind, while others match existing results but offer a much simpler proof.
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