Performance Analysis of the Gaussian Quasi-Maximum Likelihood Approach for Independent Vector Analysis
Amir Weiss, Sher Ali Cheema, Martin Haardt, and Arie Yeredor

TL;DR
This paper analyzes the asymptotic performance of Gaussian Quasi-Maximum Likelihood Estimation in Independent Vector Analysis, showing it achieves perfect separation under mild conditions and deriving explicit error and interference ratios.
Contribution
It provides the first asymptotic analysis of Gaussian QML in IVA, revealing its robustness and deriving closed-form expressions for separation errors and interference ratios.
Findings
QMLE attains perfect separation asymptotically regardless of source distribution.
Interference-to-Source Ratios depend only on source covariances asymptotically.
Empirical results confirm analytical predictions under model errors.
Abstract
Maximum Likelihood (ML) estimation requires precise knowledge of the underlying statistical model. In Quasi ML (QML), a presumed model is used as a substitute to the (unknown) true model. In the context of Independent Vector Analysis (IVA), we consider the Gaussian QML Estimate (QMLE) of the demixing matrices set and present an (approximate) analysis of its asymptotic separation performance. In Gaussian QML the sources are presumed to be Gaussian, with covariance matrices specified by some "educated guess". The resulting quasi-likelihood equations of the demixing matrices take a special form, recently termed an extended "Sequentially Drilled" Joint Congruence (SeDJoCo) transformation, which is reminiscent of (though essentially different from) classical joint diagonalization. We show that asymptotically this QMLE, i.e., the solution of the resulting extended SeDJoCo transformation,…
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