Paper ID: 2212.09508
A note on the smallest eigenvalue of the empirical covariance of causal Gaussian processes
Ingvar Ziemann
We present a simple proof for bounding the smallest eigenvalue of the empirical covariance in a causal Gaussian process. Along the way, we establish a one-sided tail inequality for Gaussian quadratic forms using a causal decomposition. Our proof only uses elementary facts about the Gaussian distribution and the union bound. We conclude with an example in which we provide a performance guarantee for least squares identification of a vector autoregression.
Submitted: Dec 19, 2022