On the Number of Iterations for Dantzig-Wolfe Optimization and Packing-Covering Approximation Algorithms
Phil Klein, Neal E. Young

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Abstract
We give a lower bound on the iteration complexity of a natural class of Lagrangean-relaxation algorithms for approximately solving packing/covering linear programs. We show that, given an input with random 0/1-constraints on variables, with high probability, any such algorithm requires iterations to compute a -approximate solution, where is the width of the input. The bound is tight for a range of the parameters . The algorithms in the class include Dantzig-Wolfe decomposition, Benders' decomposition, Lagrangean relaxation as developed by Held and Karp [1971] for lower-bounding TSP, and many others (e.g. by Plotkin, Shmoys, and Tardos [1988] and Grigoriadis and Khachiyan [1996]). To prove the bound, we use a discrepancy argument to show an analogous lower bound on the support size of…
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