Abstract

Column-sparse packing problems arise in several contexts in both deterministic and stochastic discrete optimization. We present two unifying ideas, (non-uniform) attenuation and multiple-chance algorithms , to obtain improved approximation algorithms for some well-known families of such problems. As three main examples, we attain the integrality gap, up to lower-order terms, for known LP relaxations for k -column-sparse packing integer programs (Bansal et al., Theory of Computing , 2012) and stochastic k -set packing (Bansal et al., Algorithmica , 2012), and go “half the remaining distance” to optimal for a major integrality-gap conjecture of Füredi, Kahn, and Seymour on hypergraph matching ( Combinatorica , 1993).

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