s-Club Cluster Vertex Deletion on interval and well-partitioned chordal graphs

DISCRETE APPLIED MATHEMATICS(2024)

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摘要
In this paper, we study the computational complexity of S-CLUB CLUSTER VERTEX DELETION. Given a graph, S-CLUB CLUSTER VERTEX DELETION (S-CVD) aims to delete the minimum number of vertices from the graph so that each connected component of the resulting graph has a diameter at most s. When s = 1, the corresponding problem is popularly known as CLUSTER VERTEX DELETION (CVD). We provide a faster algorithm for S-CVD on interval graphs. For each s >= 1, we give an O(n(n+m))-time algorithm for S-CVD on interval graphs with n vertices and m edges. In the case of s = 1, our algorithm is a slight improvement over the O(n(3))-time algorithm of Cao et al. (2018), and for s >= 2, it significantly improves the state-of-the-art running time (O (n(4))).We also give a polynomial-time algorithm to solve CVD on well-partitioned chordal graphs, a graph class introduced by Ahn et al. (WG 2020) as a tool for narrowing down complexity gaps for problems that are hard on chordal graphs, and easy on split graphs. Our algorithm relies on a characterisation of the optimal solution and on solving polynomially many instances of the WEIghTED BIPARTITE VERTEX COVER. This generalises a result of Cao et al. (2018) on split graphs. We also show that for any even integer s >= 2, S-CVD is NP-hard on well-partitioned chordal graphs.(c) 2023 Published by Elsevier B.V.
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关键词
Vertex deletion problem,CLUSTER VERTEX DELETION,S-CLUB CLUSTER VERTEX DELETION,Well-partitioned chordal graphs,Interval graphs
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