
The circular law for random regular digraphs with random edge weights
Publication
, Journal Article
Cook, N
Published in: Random Matrices: Theory and Application
July 1, 2017
We consider random n × n matrices of the form Yn = 1 dAn Xn, where An is the adjacency matrix of a uniform random d-regular directed graph on n vertices, with d = ?pn? for some fixed p (0, 1), and Xn is an n × n matrix of i.i.d. centered random variables with unit variance and finite (4 + ?)th moment (here denotes the matrix Hadamard product). We show that as n →∞, the empirical spectral distribution of Yn converges weakly in probability to the normalized Lebesgue measure on the unit disk.
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Published In
Random Matrices: Theory and Application
DOI
EISSN
2010-3271
ISSN
2010-3263
Publication Date
July 1, 2017
Volume
6
Issue
3
Related Subject Headings
- 0105 Mathematical Physics
- 0102 Applied Mathematics
- 0101 Pure Mathematics
Citation
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MLA
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Cook, N. (2017). The circular law for random regular digraphs with random edge weights. Random Matrices: Theory and Application, 6(3). https://doi.org/10.1142/S2010326317500125
Cook, N. “The circular law for random regular digraphs with random edge weights.” Random Matrices: Theory and Application 6, no. 3 (July 1, 2017). https://doi.org/10.1142/S2010326317500125.
Cook N. The circular law for random regular digraphs with random edge weights. Random Matrices: Theory and Application. 2017 Jul 1;6(3).
Cook, N. “The circular law for random regular digraphs with random edge weights.” Random Matrices: Theory and Application, vol. 6, no. 3, July 2017. Scopus, doi:10.1142/S2010326317500125.
Cook N. The circular law for random regular digraphs with random edge weights. Random Matrices: Theory and Application. 2017 Jul 1;6(3).

Published In
Random Matrices: Theory and Application
DOI
EISSN
2010-3271
ISSN
2010-3263
Publication Date
July 1, 2017
Volume
6
Issue
3
Related Subject Headings
- 0105 Mathematical Physics
- 0102 Applied Mathematics
- 0101 Pure Mathematics