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Parameterized Complexity of Fair Deletion Problems

机译:公平删除问题的参数化复杂度

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Deletion problems are those where given a graph G and a graph property n, the goal is to find a subset of edges such that after its removal the graph G will satisfy the property n. Typically, we want to minimize the number of elements removed. In fair deletion problems we change the objective: we minimize the maximum number of deletions in a neighborhood of a single vertex. We study the parameterized complexity of fair deletion problems with respect to the structural parameters of the tree-width, the path-width, the size of a minimum feedback vertex set, the neighborhood diversity, and the size of minimum vertex cover of graph G. We prove the W[l]-hardness of the fair FO vertex-deletion problem with respect to the first three parameters combined. Moreover, we show that there is no algorithm for fair FO vertex-deletion problem running in time n°~((3/(1/2)/k)) , where n is the size of the graph and k is the sum of the first three mentioned parameters, provided that the Exponential Time Hypothesis holds. On the other hand, we provide an FPT algorithm for the fair MSO edge-deletion problem parameterized by the size of minimum vertex cover and an FPT algorithm for the fair MSO vertex-deletion problem parameterized by the neighborhood diversity.
机译:删除问题是那些给定图形G和图形属性n的问题,目标是找到边缘的子集,以使图形G在删除后满足条件n。通常,我们希望最大程度地减少删除的元素数量。在公平删除问题中,我们更改了目标:我们将单个顶点附近的最大删除次数降至最低。我们针对图G的树宽,路径宽度,最小反馈顶点集的大小,邻域分集和最小顶点覆盖的大小的结构参数研究公平删除问题的参数化复杂性。我们证明了结合前三个参数的公平FO顶点删除问题的W [l]硬度。此外,我们证明了在n°〜((3 /(1/2)/ k))的时间内没有公平的FO顶点删除问题的算法,其中n是图的大小,k是图的和前三个提到的参数,前提是指数时间假说成立。另一方面,我们为通过最小顶点覆盖的大小参数化的公平MSO边缘删除问题提供了FPT算法,并为通过邻域分集参数化的公平MSO顶点删除问题提供了FPT算法。

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