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arxiv: 1409.3742 · v1 · pith:4OCXOVIRnew · submitted 2014-09-12 · 💻 cs.DS

Data Reductions and Combinatorial Bounds for Improved Approximation Algorithms

classification 💻 cs.DS
keywords algorithmsapproximationreductionstextsccombinatorialcontextmethodparameterized
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Kernelization algorithms in the context of Parameterized Complexity are often based on a combination of reduction rules and combinatorial insights. We will expose in this paper a similar strategy for obtaining polynomial-time approximation algorithms. Our method features the use of approximation-preserving reductions, akin to the notion of parameterized reductions. We exemplify this method to obtain the currently best approximation algorithms for \textsc{Harmless Set}, \textsc{Differential} and \textsc{Multiple Nonblocker}, all of them can be considered in the context of securing networks or information propagation.

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