Abstract:
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 Harmless Set, Differential
and Multiple Nonblocker, all of them can be considered in the
context of securing networks or information propagation
Citation:
Chopin, M., & Fernau, H. (2014, November). Approximation algorithms inspired by kernelization methods. In Algorithms and Computation: 25th International Symposium, ISAAC 2014, Jeonju, Korea, December 15-17, 2014, Proceedings (Vol. 8889, p. 479). Springer.