- Series
- Stochastics Seminar
- Time
- Thursday, November 19, 2015 - 3:05pm for 1 hour (actually 50 minutes)
- Location
- Skiles 006
- Speaker
- Konstantin Tikhomirov – University of Alberta
- Organizer
- Christian Houdré
Consider a sample of a centered random vector with unit covariance matrix.
We show that under certain regularity assumptions, and up to a natural
scaling, the smallest and the largest eigenvalues of the empirical
covariance matrix converge, when the dimension and the sample size both
tend to infinity, to the left and right edges of the Marchenko-Pastur
distribution. The assumptions are related to tails of norms of orthogonal
projections. They cover isotropic log-concave random vectors as well as
random vectors with i.i.d. coordinates with almost optimal moment
conditions. The method is a refinement of the rank one update approach used
by Srivastava and Vershynin to produce non-asymptotic quantitative
estimates. In other words we provide a new proof of the Bai and Yin theorem
using basic tools from probability theory and linear algebra, together with
a new extension of this theorem to random matrices with dependent entries.
Based on joint work with Djalil Chafai.