English

Large dimensional random k circulants

Probability 2009-12-07 v2

Abstract

Consider random k-circulants A_{k,n} with n tends to infinity, k=k(n) and whose input sequence \{a_l\}_{l \ge 0} is independent with mean zero and variance one and \sup_n n^{-1}\sum_{l=1}^n \E |a_l|^{2+\delta}< \infty for some \delta > 0. Under suitable restrictions on the sequence \{k(n)\}_{n \ge 1}, we show that the limiting spectral distribution (LSD) of the empirical distribution of suitably scaled eigenvalues exists and identify the limits. In particular, we prove the following: Suppose g \ge 1 is fixed and p_1 is the smallest prime divisor of g. Suppose P_g=\prod_{j=1}^g E_j where \{E_j\}_{1 \le j \le g} are i.i.d. exponential random variables with mean one. (i) If k^g = -1+ s n where s=1 if g=1 and s = o(n^{p_1 -1}) if g>1, then the empirical spectral distribution of n^{-1/2}A_{k,n} converges weakly in probability to U_1P_g^{1/2g} where U_1 is uniformly distributed over the (2g)th roots of unity, independent of P_g. (ii) If g \ge 2 and k^g = 1+ s n with s = o(n^{p_1-1}) then the empirical spectral distribution of n^{-1/2}A_{k,n} converges weakly in probability to U_2P_g^{1/2g} where U_2 is uniformly distributed over the unit circle in \mathbb R^2, independent of P_g. On the other hand, if k \ge 2, k= n^{o(1)} with \gcd(n,k) = 1, and the input is i.i.d. standard normal variables, then F_{n^{-1/2}A_{k,n}} converges weakly in probability to the uniform distribution over the circle with center at (0,0) and radius r = \exp(\E [ \log \sqrt E_1]). We also show that when n=k^2+1\to \infty, and the input is i.i.d. with finite (2+\delta) moment, then the spectral radius, with appropriate scaling and centering, converges to the Gumbel distribution.

Keywords

Cite

@article{arxiv.0903.0128,
  title  = {Large dimensional random k circulants},
  author = {Arup Bose and Joydip Mitra and Arnab Sen},
  journal= {arXiv preprint arXiv:0903.0128},
  year   = {2009}
}

Comments

30 pages, major revision

R2 v1 2026-06-21T12:16:56.247Z