On maxispaces of nonparametric tests
Statistics Theory
2018-05-18 v8 Statistics Theory
Abstract
For the problems of nonparametric hypothesis testing we introduce the notion of maxisets and maxispace. We point out the maxisets of tests, Cramer-von Mises tests, tests generated - norms of kernel estimators and tests generated quadratic forms of estimators of Fourier coefficients. For these tests we show that, if sequence of alternatives having given rates of convergence to hypothesis is consistent, then each altehrnative can be broken down into the sum of two parts: a function belonging to maxiset and orthogonal function. Sequence of functions belonging to maxiset is consistent sequence of alternatives. We point out asymptotically minimax tests if sets of alternatives are maxiset with deleted "small" -balls.
Cite
@article{arxiv.1708.04985,
title = {On maxispaces of nonparametric tests},
author = {Mikhail Ermakov},
journal= {arXiv preprint arXiv:1708.04985},
year = {2018}
}