Abstract
A mixed graph is a graph that can be obtained from a simple undirected graph by replacing some of the edges by arcs in precisely one of the two possible directions. The Hermitian adjacency matrix of a mixed graph G of order n is the n × n matrix H(G) = (hij ), where hij = −hji = i (with i =√−1) if there exists an arc from vi to vj (but no arc from vj to vi), hij = hji = 1 if there exists an edge (and no arcs) between vi and vj, and hij = 0 otherwise (if vi and vj are neither joined by an edge nor by an arc). We study the spectra of the Hermitian adjacency matrix and the normalized Hermitian Laplacian matrix of general random mixed graphs, i.e., in which all arcs are chosen independently with different probabilities (and an edge is regarded as two oppositely oriented arcs joining the same pair of vertices). For our first main result, we derive a new probability inequality and apply it to obtain an upper bound on the eigenvalues of the Hermitian adjacency matrix. Our second main result shows that the eigenvalues of the normalized Hermitian Lapla-cian matrix can be approximated by the eigenvalues of a closely related weighted expectation matrix, with error bounds depending on the minimum expected degree of the underlying undirected graph.
Original language | English |
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Article number | P1.3 |
Pages (from-to) | 1-23 |
Number of pages | 23 |
Journal | Electronic Journal of Combinatorics |
Volume | 28 |
Issue number | 1 |
DOIs | |
State | Published - 2021 |
Keywords
- General random mixed graphs
- Random Hermitian adjacency matrix
- Random normalized Hermitian Laplacian matrix
- Spectra