FPT Approximation and Subexponential Algorithms for Covering Few or Many Edges
Fedor V. Fomin, Petr A. Golovach, Tanmay Inamdar, Tomohiro Koana

TL;DR
This paper develops fixed-parameter approximation schemes and subexponential algorithms for a generalized graph partitioning problem, extending techniques from specific cases like Max k-Vertex Cover to broader settings.
Contribution
It introduces FPT approximation schemes and subexponential algorithms for the extsc{$oldsymbol{ ext{ extalpha}- ext{FCGP}}$} problem, generalizing previous methods to more complex graph partitioning scenarios.
Findings
FPT approximation schemes for extalpha > 0
Subexponential algorithms for apex-minor free graphs with extalpha > 1/3
Extensions of greedy degree ordering techniques
Abstract
We study the \textsc{-Fixed Cardinality Graph Partitioning (-FCGP)} problem, the generic local graph partitioning problem introduced by Bonnet et al. [Algorithmica 2015]. In this problem, we are given a graph , two numbers and , the question is whether there is a set of size with a specified coverage function at least (or at most for the minimization version). The coverage function counts edges with exactly one endpoint in with weight and edges with both endpoints in with weight . -FCGP generalizes a number of fundamental graph problems such as \textsc{Densest -Subgraph}, \textsc{Max -Vertex Cover}, and \textsc{Max -Cut}. A natural question in the study of -FCGP is whether the algorithmic results known for its…
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Taxonomy
TopicsAdvanced Graph Theory Research · VLSI and FPGA Design Techniques · Complexity and Algorithms in Graphs
