Estimating the parameters of lifetime distributions under progressively Type-II censoring from fuzzy data

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The problem of estimating lifetime distribution parameters under progressively Type-II censoring originated in the context of reliability. But traditionally it is assumed that the available data from this censoring scheme are performed in exact numbers. However, some collected lifetime data might be imprecise and are represented in the form of fuzzy numbers. Thus, it is necessary to generalize classical statistical estimation methods for real numbers to fuzzy numbers. This paper deals with the estimation of lifetime distribution parameters under progressively Type-II censoring scheme when the lifetime observations are reported by means of fuzzy numbers. A new method is proposed to determine the maximum likelihood estimates of the parameters of interest. The methodology is illustrated with two popular models in lifetime analysis, the Rayleigh and Lognormal lifetime distributions.

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Journal of Applied Mathematics, Statistics and Informatics

The Journal of University of Saint Cyril and Metodius

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Mathematical Citation Quotient (MCQ) 2017: 0.06

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researchers in the fields of informatics, information technologies, statistics and mathematics


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