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Admissibility of Solution Estimators for Stochastic Optimization
Author(s) -
Amitabh Basu,
Tu Nguyen,
Ao Sun
Publication year - 2021
Publication title -
siam journal on mathematics of data science
Language(s) - English
Resource type - Journals
ISSN - 2577-0187
DOI - 10.1137/19m1291546
Subject(s) - estimator , mathematics , stochastic optimization , mathematical optimization , dimension (graph theory) , optimization problem , sample (material) , empirical risk minimization , simple (philosophy) , quadratic equation , statistics , combinatorics , philosophy , chemistry , geometry , epistemology , chromatography
We look at stochastic optimization problems through the lens of statistical decision theory. In particular, we address admissibility, in the statistical decision theory sense, of the natural sample average estimator for a stochastic optimization problem (which is also known as the empirical risk minimization (ERM) rule in learning literature). It is well known that for general stochastic optimization problems, the sample average estimator may not be admissible. This is known as Stein's paradox in the statistics literature. We show in this paper that for optimizing stochastic linear functions over compact sets, the sample average estimator is admissible.

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