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We prove a large deviation principle for the largest singular value of sparse non-Hermitian random matrices, or directed Erdos-R\'enyi networks in the constant average degree regime p =dn where d is fixed. Entries are assumed to have Weibull distributions with tail decaying at rate e^-t^{} for >0. While the law of large number results agree with the largest eigenvalue of sparse Hermitian matrices given in (Ganguly and Nam, '22) and (Ganguly, Hiesmayr and Nam, '22), large deviation results are surprisingly simpler, exhibiting a single transition at =2. The rate function for undirected networks with 02, both the law of large numbers and large deviation results are identical to the sparse Hermitian case. Our results easily generalize to rectangular i. i. d. ensembles.
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Hyungwon Han (Fri,) studied this question.
synapsesocial.com/papers/68e64d66b6db6435875ddcdc — DOI: https://doi.org/10.48550/arxiv.2406.09851
Hyungwon Han
Shandong Maternal and Child Health Hospital
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