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Bootstrap confidence intervals in mixtures of discrete distributions
Authors:Dimitris Karlis  Valentin Patilea  
Institution:

aDepartment of Statistics, Athens University of Economics, 76 Patission Street, Athens 10434, Greece

bCREST-ENSAI, Campus de Ker Lann, Rue Blaise Pascal BP 37203, 35172 Bruz Cedex, France

Abstract:The problem of building bootstrap confidence intervals for small probabilities with count data is addressed. The law of the independent observations is assumed to be a mixture of a given family of power series distributions. The mixing distribution is estimated by nonparametric maximum likelihood and the corresponding mixture is used for resampling. We build percentile-t and Efron percentile bootstrap confidence intervals for the probabilities and we prove their consistency in probability. The new theoretical results are supported by simulation experiments for Poisson and geometric mixtures. We compare percentile-t and Efron percentile bootstrap intervals with eight other bootstrap or asymptotic theory based intervals. It appears that Efron percentile bootstrap intervals outperform the competitors in terms of coverage probability and length.
Keywords:Percentile-t confidence intervals  Efron percentile confidence intervals  Mixture models  Power series distributions  Nonparametric maximum likelihood  Asymptotic normality
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