Spectral statistics for the difference of two Wishart matrices
- URL: http://arxiv.org/abs/2011.07362v1
- Date: Sat, 14 Nov 2020 18:43:34 GMT
- Title: Spectral statistics for the difference of two Wishart matrices
- Authors: Santosh Kumar and S. Sai Charan
- Abstract summary: We derive the joint probability density function of the corresponding eigenvalues in a finite-dimension scenario using two distinct approaches.
We point out the relationship of these results with the corresponding results for difference of two random density matrices and obtain some explicit and closed form expressions for the spectral density and absolute mean.
- Score: 1.2225709246035374
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we consider the weighted difference of two independent complex
Wishart matrices and derive the joint probability density function of the
corresponding eigenvalues in a finite-dimension scenario using two distinct
approaches. The first derivation involves the use of unitary group integral,
while the second one relies on applying the derivative principle. The latter
relates the joint probability density of eigenvalues of a matrix drawn from a
unitarily invariant ensemble to the joint probability density of its diagonal
elements. Exact closed form expressions for an arbitrary order correlation
function are also obtained and spectral densities are contrasted with Monte
Carlo simulation results. Analytical results for moments as well as
probabilities quantifying positivity aspects of the spectrum are also derived.
Additionally, we provide a large-dimension asymptotic result for the spectral
density using the Stieltjes transform approach for algebraic random matrices.
Finally, we point out the relationship of these results with the corresponding
results for difference of two random density matrices and obtain some explicit
and closed form expressions for the spectral density and absolute mean.
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