non-linear bayesian prediction of generalized order statistics for liftime models
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abstract
in this paper, we obtain bayesian prediction intervals as well as bayes predictive estimatorsunder square error loss for generalized order statistics when the distribution of the underlying population belongs to a family which includes several important distributions.
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Non-linear Bayesian prediction of generalized order statistics for liftime models
In this paper, we obtain Bayesian prediction intervals as well as Bayes predictive estimators under square error loss for generalized order statistics when the distribution of the underlying population belongs to a family which includes several important distributions.
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Journal title:
international journal of nonlinear analysis and applicationsPublisher: semnan university
ISSN
volume 6
issue 1 2015
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