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Maximum likelihood estimation in Dagum distribution with censored samples

Filippo Domma, Sabrina Giordano and Mariangela Zenga

Journal of Applied Statistics, 2011, vol. 38, issue 12, 2971-2985

Abstract: In this work, we show that the Dagum distribution [3] may be a competitive model for describing data which include censored observations in lifetime and reliability problems. Maximum likelihood estimates of the three parameters of the Dagum distribution are determined from samples with type I right and type II doubly censored data. We perform an empirical analysis using published censored data sets: in certain cases, the Dagum distribution fits the data better than other parametric distributions that are more commonly used in survival and reliability analysis. Graphical comparisons confirm that the Dagum model behaves better than a number of competitive distributions in describing the empirical hazard rate of the analyzed data. A probability plot to provide graphical check of the appropriateness of the Dagum model for right censored data is constructed, and the details are given in the appendix. Finally, a simulation study that shows the good performance of the maximum likelihood estimators of the Dagum shape parameters for finite type II doubly censored samples is carried out.

Date: 2011
References: View complete reference list from CitEc
Citations: View citations in EconPapers (7)

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DOI: 10.1080/02664763.2011.578613

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