单指数时间下树宽参数化连通性问题的求解

Marek Cygan, Jesper Nederlof, Marcin Pilipczuk, Michal Pilipczuk, J. M. M. Van Rooij, J. O. Wojtaszczyk
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引用次数: 317

摘要

对于绝大多数树宽度较小的图上的局部问题(这里的局部是指可以通过单独检查每个顶点的邻域来验证解决方案),标准的动态规划技术给出了c^tw |V|^O(1)时间算法,其中tw是输入图G = (V, E)的树宽度,c是常数。另一方面,对于具有全局需求(通常是连通性)的问题,最著名的算法是在至少tw^tw时间内运行的朴素动态规划方案。我们通过引入一种名为Cut&Count的技术打破了这一空白,该技术允许对大多数连通性类型的问题产生c^tw |V|^O(1)时间蒙特卡罗算法,包括哈密顿路径,斯坦纳树,反馈顶点集和连接支配集。这些结果在参数化复杂度、平面图和无h次图上的精确和近似算法以及有界度图上的精确算法等各个领域产生了许多影响。我们算法中的常数c在所有情况下都很小,在一些情况下,我们能够证明提高这些常数会导致强指数时间假设失败。与我们前面提到的使用Cut&Count解决的旨在最小化连接组件数量的问题相反,我们表明,假设指数时间假设,对于一些旨在最大化连接组件数量的问题(如循环包装),上述差距不能被破坏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Connectivity Problems Parameterized by Treewidth in Single Exponential Time
For the vast majority of local problems on graphs of small tree width (where by local we mean that a solution can be verified by checking separately the neighbourhood of each vertex), standard dynamic programming techniques give c^tw |V|^O(1) time algorithms, where tw is the tree width of the input graph G = (V, E) and c is a constant. On the other hand, for problems with a global requirement (usually connectivity) the best -- known algorithms were naive dynamic programming schemes running in at least tw^tw time. We breach this gap by introducing a technique we named Cut&Count that allows to produce c^tw |V|^O(1) time Monte Carlo algorithms for most connectivity-type problems, including Hamiltonian Path, Steiner Tree, Feedback Vertex Set and Connected Dominating Set. These results have numerous consequences in various fields, like parameterized complexity, exact and approximate algorithms on planar and H-minor-free graphs and exact algorithms on graphs of bounded degree. The constant c in our algorithms is in all cases small, and in several cases we are able to show that improving those constants would cause the Strong Exponential Time Hypothesis to fail. In contrast to the problems aiming to minimize the number of connected components that we solve using Cut&Count as mentioned above, we show that, assuming the Exponential Time Hypothesis, the aforementioned gap cannot be breached for some problems that aim to maximize the number of connected components like Cycle Packing.
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