On the convergence of Maronna's M-estimators of scatter
Abstract
In this paper, we propose an alternative proof for the uniqueness of Maronna's M-estimator of scatter (Maronna, 1976) for N vector observations y1,..., yN∈ Rm under a mild constraint of linear independence of any subset of m of these vectors. This entails in particular almost sure uniqueness for random vectors yi with a density as long as N>m. This approach allows to establish further relations that demonstrate that a properly normalized Tyler's M-estimator of scatter (Tyler, 1987) can be considered as a limit of Maronna's M-estimator. More precisely, the contribution is to show that each M-estimator converges towards a particular Tyler's M-estimator. These results find important implications in recent works on the large dimensional (random matrix) regime of robust M-estimation.
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