Asymptotic data analysis on manifolds

نویسندگان

  • Harrie Hendriks
  • Zinoviy Landsman
چکیده

Given an m-dimensional compact submanifold M of Euclidean space R, the concept of mean location of a distribution, related to mean or expected vector, is generalized to more general R-valued functionals including median location, which is derived from the spatial median. The asymptotic statistical inference for general functionals of distributions on such submanifolds is elaborated. Convergence properties are studied in relation to the behavior of the underlying distributions with respect to the cutlocus. An application is given in the context of independent, but not identically distributed, samples, in particular, to a multisample setup.

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تاریخ انتشار 2008