Central limit theorem and influence function for the MCD estimators at general multivariate distributions

نویسنده

  • Eric A. Cator
چکیده

We define the minimum covariance determinant functionals for multivariate location and scatter through trimming functions and establish their existence at any multivariate distribution. We provide a precise characterization including a separating ellipsoid property and prove that the functionals are continuous. Moreover we establish asymptotic normality for both the location and covariance estimator and derive the influence function. These results are obtained in a very general multivariate setting.

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تاریخ انتشار 2009