Consider one-sided testing problems for a multivariate exponential
family model. Through conditioning or other considerations, the problem
oftentimes reduces to testing a null hypothesis that the natural parameter is a
zero vector against the alternative that the natural parameter lies in a closed
convex cone $\mathscr{C}$. The problems include testing homogeneity of
parameters, testing independence in contingency tables, testing stochastic
ordering of distributions and many others. A test methodology is developed that
directionalizes the usual test procedures such as likelihood ratio, chi square,
Fisher, and so on. The methodology can be applied to families of tests where
the family is indexed by a size parameter so as to enable nonrandomized testing
by $p$-values. For discrete models, a refined family of tests provides a
refined grid for better testing by $p$-values. The tests have essential
monotonicity properties that are required for admissibility and for desirable
power properties. Two examples are given.
Publié le : 1998-12-14
Classification:
Contingency tables,
multivariate exponential family,
stochastic order,
Wilcoxon–Mann–Whitney test,
likelihood ratio order,
independence,
order restricted inference,
Fisher’s test,
peeling,
62H15,
62H17
@article{1024691473,
author = {Cohen, Arthur and Sackrowitz, Harold B.},
title = {Directional tests for one-sided alternatives in multivariate
models},
journal = {Ann. Statist.},
volume = {26},
number = {3},
year = {1998},
pages = { 2321-2338},
language = {en},
url = {http://dml.mathdoc.fr/item/1024691473}
}
Cohen, Arthur; Sackrowitz, Harold B. Directional tests for one-sided alternatives in multivariate
models. Ann. Statist., Tome 26 (1998) no. 3, pp. 2321-2338. http://gdmltest.u-ga.fr/item/1024691473/