Event

Spectrum Estimation for High-Dimensional Time Series with Applications

Professor Debashis Paul
University of California, Davis

  Date: 13 September 2017, Wednesday

  Location: S16-06-118, DSAP Seminar Room

 Time: 03:00pm – 04:00pm

 

We present results about the limiting behavior of the empirical distribution of eigenvalues of a weighted integral of the sample periodogram for a class of high-dimensional linear processes. The processes under consideration are characterized by having simultaneously diagonalizable coefficient matrices. We make use of these asymptotic results, derived under the setting where the dimension and sample size are comparable, to formulate an estimation strategy for the distribution of eigenvalues of the coefficients of the linear process. This approach generalizes existing works on estimation of the spectrum of an unknown covariance matrix for high-dimensional i.i.d. observations. We also present an application of the proposed methodology to estimation of the mean variance frontier in the Markowitz portfolio optimization problem.