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Semi-parametric Bayesian density estimation using ranked set sample in the presence of ranking error
Authors:Email author" target="_blank">Manoj?ChackoEmail author  Kaushik?Ghosh
Institution:1.Department of Statistics,University of Kerala,Trivandrum,India;2.Department of Mathematical Sciences,University of Nevada Las Vegas,Las Vegas,USA;3.Department of Mathematical Sciences,University of Nevada Las Vegas,Las Vegas,USA
Abstract:In this paper, we propose a Bayesian method to estimate the underlying density function of a study variable Y using a ranked set sample in which an auxiliary variable X is used to rank the sampling units. The amount of association between X and Y is not known, resulting in an unknown degree of ranking error. We assume that (XY) follows a Morgenstern family of distributions. The study variable Y is assumed to have a parametric distribution, with the distribution of the parameters having a Dirichlet process prior. A Markov chain Monte Carlo procedure is developed to obtain a Bayesian estimator of the desired density function as well as of the ranking error. A simulation study is used to evaluate the performance of the proposed method. An example from forestry is used to illustrate a real-life application of the proposed methodology.
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