P 3 Approach to Intersection - Union Testing of Hypotheses 1

نویسنده

  • Ashis SenGupta
چکیده

Recent applications of Statistics often leads one to encounter testing problems where the original hypothesis of interest comprises of the union of several sub-hypothesis. In the framework of such Intersection-Union testing of hypothesis, in contrast to the usual Union-Intersection framework, a subhypothesis therein may specify a parameter or a function of some of the parameters of the underlying distribution. The parameters may even be constrained to lie on the boundary of their parameter spaces. Even largesample tests such as the usual Likelihood ratio. Lagrangian multiplier or the Wald’s tests then do not apply as their usual asymptotic distribution theory remain no longer valid. An approach based on a Pivotal Parametric Product P 3 is enhanced here. It is shown that this approach often leads to appealing simple and elegant test statistics. The exact cut-off points and the power values can be computed by judicious use of numerical packages. L-optimality of such a test for the mixture problem is established. For multivariate multiparameter testing problems it is shown that such an approach leads to Union-Intersection Intersection-Union tests. Construction of such tests are exemplified through several real-life problems as in, e.g. testing for interval specifications in Acceptance Sampling, for Generalized Variance of structured correlation matrices in Generalized Canonical Variable, for agreement in Method Comparison Studies, for no contamination in multiparameter multivariate mixture models, etc. It is demonstrated for a real-life data set in an acceptance sampling problem that the proposed class of P tests Invited paper prepared for the S.N. Roy centenary volume of Journal of Statistical Planning and Inference.

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تاریخ انتشار 2006