Stahel-Donoho estimation for high-dimensional data

نویسنده

  • Stefan Van Aelst
چکیده

We discuss two recently proposed adaptations of the well-known StahelDonoho estimator of multivariate location and scatter for high-dimensional data. The first adaptation adjusts the calculation of the outlyingness of the observations while the second adaptation allows to give separate weights to each of the components of an observation. Both adaptations address the possibility that in higher dimensions most observations can be contaminated in at least one of its components. We then combine the two approaches in a new method and investigate its performance in comparison to the previously proposed methods. keywords: High-dimensional data, Robustness, Location and scatter estimation, Outlyingness, Cellwise weights.

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عنوان ژورنال:
  • Int. J. Comput. Math.

دوره 93  شماره 

صفحات  -

تاریخ انتشار 2016