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Journal Articles IEEE Transactions on Signal Processing Year : 2019

On the Asymptotics of Maronna's Robust PCA

Abstract

The eigenvalue decomposition (EVD) parameters of the second order statistics are ubiquitous in statistical analysis and signal processing. Notably, the EVD of the M-estimators of the scatter matrix is a popular choice to perform robust probabilistic PCA or other dimension reduction related applications. Towards the goal of characterizing this process, this paper derives new asymptotics for the EVD parameters (i.e. eigenvalues, eigenvectors, and principal subspace) of M-estimators in the context of complex elliptically symmetric distributions. First, their Gaussian asymptotic distribution is obtained by extending standard results on the sample covari-ance matrix in the Gaussian context. Second, their convergence towards the EVD parameters of a Gaussian-Core Wishart Equivalent is derived. This second result represents the main contribution in the sense that it quantifies when it is acceptable to directly rely on well-established results on the EVD of Wishart-distributed matrix for characterizing the EVD of M-estimators. Finally, some examples (intrinsic bias analysis, rank estimation, and low-rank adaptive filtering) illustrate where the obtained results can be leveraged.
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Dates and versions

hal-02399630 , version 1 (26-02-2020)

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Gordana Draskovic, Arnaud Breloy, Frédéric Pascal. On the Asymptotics of Maronna's Robust PCA. IEEE Transactions on Signal Processing, 2019, 67 (19), pp.4964-4975. ⟨10.1109/TSP.2019.2932877⟩. ⟨hal-02399630⟩
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