Affine equivariant rank-weighted L-estimation of multivariate location
classification
🧮 math.ST
stat.TH
keywords
locationmultivariateaffineaffine-equivariantaffine-invarianceclasscomputationdistances
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In the multivariate one-sample location model, we propose a class of flexible robust, affine-equivariant L-estimators of location, for distributions invoking affine-invariance of Mahalanobis distances of individual observations. An involved iteration process for their computation is numerically illustrated.
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