Conference Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 390 - Functional and High-Dimensional Data
Type: Contributed
Date/Time: Wednesday, August 10, 2022 : 8:30 AM to 10:20 AM
Sponsor: IMS
Abstract #322647
Title: The Stein Effect for Frechet Means
Author(s): Andrew McCormack* and Peter Hoff
Companies: Duke University and Duke University
Keywords: Non-Euclidean Data; Shrinkage; Frechet Mean; Hadamard Space; Empirical Bayes
Abstract:

The Frechet mean is a useful description of location for a probability distribution on a metric space that is not necessarily a vector space. In this work we consider simultaneous estimation of multiple Frechet means from a decision-theoretic perspective, and in particular, the extent to which the unbiased estimator of a Frechet mean can be dominated by a generalization of the James-Stein shrinkage estimator. It is shown that if the metric space satisfies a non-positive curvature condition, then this generalized James-Stein estimator asymptotically dominates the unbiased estimator as the dimension of the space grows. These results hold for a large class of distributions on a variety of spaces - including Hilbert spaces - and therefore partially extend known results on the applicability of the James-Stein estimator to non-normal distributions on Euclidean spaces. Simulation studies on metric trees and symmetric positive definite matrices are presented, numerically demonstrating the efficacy of this generalized James-Stein estimator.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2022 program