Abstract:
The largest eigenvalue of a single or a double Wishart matrix, both known as Roy’s
largest root, plays an important role in a variety of applications. Recently, via a small
noise perturbation approach with fixed dimension and degrees of freedom, Johnstone
and Nadler derived simple yet accurate approximations to its distribution in the real
valued case, under a rank-one alternative. In this paper, we extend their results to
the complex valued case for five common single matrix and double matrix settings. In
addition, we study the finite sample distribution of the leading eigenvector. We present
the utility of our results in several signal detection and communication applications, and
illustrate their accuracy via simulations.
Citation:
Dharmawansa, P., Nadler, B., & Shwartz, O. (2019). Roy’s largest root under rank-one perturbations: The complex valued case and applications. Journal of Multivariate Analysis, 174, 104524. https://doi.org/10.1016/j.jmva.2019.05.009