On the Complexity of the Eigenvalue Deletion Problem
Neeldhara Misra, Harshil Mittal, Saket Saurabh, Dhara Thakkar

TL;DR
This paper investigates the computational complexity of the r-Eigenvalue Vertex Deletion problem, analyzing its NP-completeness, fixed-parameter tractability, and special cases for various graph classes and modifications.
Contribution
It establishes the NP-completeness and FPT results for r-EVD, and explores the complexity landscape for different variants and special cases, including cluster graphs.
Findings
r-EVD is NP-complete for fixed r > 2 on bipartite graphs with max degree four.
r-EVD is FPT when parameterized by solution size and maximum degree.
Edge addition variant admits a quadratic kernel.
Abstract
For any fixed positive integer and a given budget , the -\textsc{Eigenvalue Vertex Deletion} (-EVD) problem asks if a graph admits a subset of at most vertices such that the adjacency matrix of has at most distinct eigenvalues. The edge deletion, edge addition, and edge editing variants are defined analogously. For , -EVD is equivalent to the Vertex Cover problem. For , it turns out that -EVD amounts to removing a subset of at most vertices so that is a cluster graph where all connected components have the same size. We show that -EVD is NP-complete even on bipartite graphs with maximum degree four for every fixed , and FPT when parameterized by the solution size and the maximum degree of the graph. We also establish several results for the special case when . For the vertex…
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