Lokshtanov et al.~[STOC 2017] introduced \emph{lossy kernelization} as a mathematical framework for quantifying the effectiveness of preprocessing algorithms in preserving approximation ratios. \emph{$\alpha$-approximate reduction rules} are a central notion of this framework. We propose that carefully crafted $\alpha$-approximate reduction rules can yield improved approximation ratios in practice, while being easy to implement as well. This is distinctly different from the (theoretical) purpose for which Lokshtanov et al. designed $\alpha$-approximate Reduction Rules. As evidence in support of this proposal we present a new 2-approximate reduction rule for the \textsc{Dominating Set} problem. This rule, when combined with an approximation algorithm for \textsc{Dominating Set}, yields significantly better approximation ratios on a variety of benchmark instances as compared to the latter algorithm alone. The central thesis of this work is that $\alpha$-approximate reduction rules can be used as a tool for designing approximation algorithms which perform better in practice. To the best of our knowledge, ours is the first exploration of the use of $\alpha$-approximate reduction rules as a design technique for practical approximation algorithms. We believe that this technique could be useful in coming up with improved approximation algorithms for other optimization problems as well.
翻译:Lokshtanov et al.~[STOC 2017] 引入了\ emph{lossy 内核化,作为量化预处理算法在维护近似比率方面效力的数学框架。\ emph{$\ alpha$\ para$- appload section rules} 是这个框架的中心概念。 我们建议,仔细制定 $\ alpha$- probaltanov et al. 引入了\ emphem{lusy lovelization et al. 。 这与Lokshtanov et al. 设计 $\ alpha$- pap sublication Rules 的(理论性能 ) 明显不同的目的(理论性) 截然不同。 作为支持这项提案的证据, 我们提出了一个新的2- 近似削减规则规则的削减规则。 这个规则,如果加上 \ textscrime {Dominate Set} ral ral ral ral ral ral supple laction laction sub laction lapple laction lapples us in the the the the proview sub lapplemental sublementalizations