TL;DR
This paper derives new bounds for the extremal eigenvalues of gain Laplacian matrices in complex unit gain graphs, including signed graphs, and compares these bounds with existing results using random graph models.
Contribution
The paper introduces novel bounds for extremal eigenvalues of gain Laplacian matrices, applicable to complex gain graphs and signed graphs, with a focus on gain-dependent and optimization-based bounds.
Findings
New lower and upper bounds for eigenvalues in terms of graph parameters.
Bounds converge to extremal eigenvalues in the limit.
Comparison with existing bounds shows improvements for random graphs.
Abstract
A complex unit gain graph (-gain graph), is a graph where the function assigns a unit complex number to each orientation of an edge of , and its inverse is assigned to the opposite orientation. A -gain graph is balanced if the product of the edge gains of each cycle (with a fixed orientation) is . Signed graphs are special cases of -gain graphs. The adjacency matrix of , denoted by is defined canonically. The gain Laplacian for is defined as , where is the diagonal matrix with diagonal entries are the degrees of the vertices of . The minimum number of vertices (resp., edges) to be deleted from in order to get a balanced gain graph the frustration number (resp, frustration index). We show…
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