A matching $M$ is a $\mathscr{P}$-matching if the subgraph induced by the endpoints of the edges of $M$ satisfies property $\mathscr{P}$. As examples, for appropriate choices of $\mathscr{P}$, the problems Induced Matching, Uniquely Restricted Matching, Connected Matching and Disconnected Matching arise. For many of these problems, finding a maximum $\mathscr{P}$-matching is a knowingly NP-Hard problem, with few exceptions, such as connected matchings, which has the same time complexity as usual Maximum Matching problem. The weighted variant of Maximum Matching has been studied for decades, with many applications, including the well-known Assignment problem. Motivated by this fact, in addition to some recent researches in weighted versions of acyclic and induced matchings, we study the Maximum Weight Connected Matching. In this problem, we want to find a matching $M$ such that the endpoint vertices of its edges induce a connected subgraph and the sum of the edge weights of $M$ is maximum. Unlike the unweighted Connected Matching problem, which is in P for general graphs, we show that Maximum Weight Connected Matching is NP-Hard even for bounded diameter bipartite graphs, starlike graphs, planar bipartite, and bounded degree planar graphs, while solvable in linear time for trees and subcubic graphs. When we restrict edge weights to be non negative only, we show that the problem turns to be polynomially solvable for chordal graphs, while it remains NP-Hard for most of the cases when weights can be negative. Our final contributions are on parameterized complexity. On the positive side, we present a single exponential time algorithm when parameterized by treewidth. In terms of kernelization, we show that, even when restricted to binary weights, Weighted Connected Matching does not admit a polynomial kernel when parameterized by vertex cover under standard complexity-theoretical hypotheses.
翻译:匹配 $M$ 是一个 $mathcr{P} 与 $mathscr{P} 相匹配的复杂度。 对于其中的许多问题, 找到一个最大 $mathscr{P} 和不连接的匹配, 发现一个最大 mathscr{Pr} 的复杂度是一个有意识的硬度问题, 很少有例外, 比如连接的匹配, 与通常的最大匹配问题一样, 也限制了时间的复杂度 。 例如, 对于适当选择 $mathscr{P} 美元来说, 最大匹配的加权变异性已经研究了几十年, 包括众所周知的任务问题。 受这个事实的驱使, 除了最近对精密的周期和导匹配的研究之外, 我们只能研究最接近的直径匹配。 在这个问题中, 我们想要找到一个匹配的 $M$, 平面的平面平面的平面比值, 当我们平面的平面平面的平面显示一个最大平面的平面, 显示我们平面的平面的平面的平面的平面, 当我们平面的平面时, 我们的平面显示我们的平面的平面的平面的平面的平面的平面的平面, 。