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Robust Wald-type tests for non-homogeneous...
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Robust Wald-type tests for non-homogeneous observations based on minimum density power divergence estimator

Abstract

This paper considers the problem of robust hypothesis testing under non-identically distributed data. We propose Wald-type tests for both simple and composite hypothesis for independent but non-homogeneous observations based on the robust minimum density power divergence estimator of the common underlying parameter. Asymptotic and theoretical robustness properties of the proposed tests have been discussed. Application to the problem of testing the general linear hypothesis in a generalized linear model with fixed-design has been considered in detail with specific illustrations for its special cases under normal and Poisson distributions.

Authors

Basu A; Ghosh A; Martin N; Pardo L

Publication date

July 7, 2017

DOI

10.48550/arxiv.1707.02333

Preprint server

arXiv
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