Probability Seminar
Department of Mathematical Sciences |
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Tony Cai The Wharton School, University of Pennsylvania
Fuzzy Hypotheses, Hermite Polynomials, and Optimal Estimation
of a Nonsmooth Functional
In this talk I will discuss some recent work on
optimal estimation of nonsmooth functionals. These problems exhibit
some interesting features that are significantly different from those that
occur in estimating conventional smooth functionals. This is a setting
where standard techniques fail. I will discuss a newly developed general
minimax lower bound technique that is based on testing two fuzzy hypotheses
and illustrate the ideas by focusing on the problem of optimal estimation of
the l_1 norm of a high dimensional normal mean vector. An estimator is
constructed using approximation theory and Hermite polynomials and is shown
to be asymptotically sharp minimax. This is joint work with Mark Low.
©2008, Department of Mathematical Sciences
Last Modified:
February 26, 2008