The Sign Covariance Matrix is an orthogonal equivariant estimator of multivariate scale. It is often used as an easy-to-compute and highly robust estimator. In this paper we propose a k-step version of the Sign Covariance Matrix, which improves its efficiency while keeping the maximal breakdown point. If k tends to infinity, Tyler's M-estimator is obtained. It turns out that even for very low values of k, one gets almost the same efficiency as Tyler's M-estimator. © 2010 The Author(s).
CITATION STYLE
Croux, C., Dehon, C., & Yadine, A. (2010). The k-step spatial sign covariance matrix. Advances in Data Analysis and Classification, 4(2), 137–150. https://doi.org/10.1007/s11634-010-0062-7
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