We obtain nonasymptotic bounds on the spectral norm of random matrices with
independent entries that improve significantly on earlier results. If X is
the n×n symmetric matrix with Xij∼N(0,bij2), we show that
E∥X∥≲imaxj∑bij2+ijmax∣bij∣logn. This bound is optimal in the sense that a matching
lower bound holds under mild assumptions, and the constants are sufficiently
sharp that we can often capture the precise edge of the spectrum. Analogous
results are obtained for rectangular matrices and for more general sub-Gaussian
or heavy-tailed distributions of the entries, and we derive tail bounds in
addition to bounds on the expected norm. The proofs are based on a combination
of the moment method and geometric functional analysis techniques. As an
application, we show that our bounds immediately yield the correct phase
transition behavior of the spectral edge of random band matrices and of sparse
Wigner matrices. We also recover a result of Seginer on the norm of Rademacher
matrices.Comment: Published at http://dx.doi.org/10.1214/15-AOP1025 in the Annals of
Probability (http://www.imstat.org/aop/) by the Institute of Mathematical
Statistics (http://www.imstat.org