Divergence-based estimation and testing with misclassified data |
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Authors: | E. Landaburu D. Morales L. Pardo |
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Affiliation: | (1) Department of Statistics & O. R., Complutense University of Madrid, Madrid;(2) Operations Research Center, Miguel Hernández University of Elche, Elche |
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Abstract: | The well-known chi-squared goodness-of-fit test for a multinomial distribution is generally biased when the observations are subject to misclassification. In Pardo and Zografos (2000) the problem was considered using a double sampling scheme and ø-divergence test statistics. A new problem appears if the null hypothesis is not simple because it is necessary to give estimators for the unknown parameters. In this paper the minimum ø-divergence estimators are considered and some of their properties are established. The proposed ø-divergence test statistics are obtained by calculating ø-divergences between probability density functions and by replacing parameters by their minimum ø-divergence estimators in the derived expressions. Asymptotic distributions of the new test statistics are also obtained. The testing procedure is illustrated with an example. |
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Keywords: | Misclassification Double sampling Divergence estimators Goodness-of-fit tests Divergence statistics |
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