The inverse power Lindley distribution in the presence of left-censored data |
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Authors: | Emílio A. Coelho-Barros Josmar Mazucheli Jorge A. Achcar Kelly Vanessa Parede Barco José Rafael Tovar Cuevas |
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Affiliation: | 1. Department of Mathematics, Federal University of Technology, Paraná, Brazileabarros@utfpr.edu.br;3. Department of Statistics, Maringá State University, Brazil;4. Department of Social Medicine, University of S?o Paulo, Brazil;5. Union Faculty of Campo Mour?o, Campo Mour?o, Brazil;6. School of Statistics, University of del Valle, Santiago de Cali, Colombia |
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Abstract: | In this study, classical and Bayesian inference methods are introduced to analyze lifetime data sets in the presence of left censoring considering two generalizations of the Lindley distribution: a first generalization proposed by Ghitany et al. [Power Lindley distribution and associated inference, Comput. Statist. Data Anal. 64 (2013), pp. 20–33], denoted as a power Lindley distribution and a second generalization proposed by Sharma et al. [The inverse Lindley distribution: A stress–strength reliability model with application to head and neck cancer data, J. Ind. Prod. Eng. 32 (2015), pp. 162–173], denoted as an inverse Lindley distribution. In our approach, we have used a distribution obtained from these two generalizations denoted as an inverse power Lindley distribution. A numerical illustration is presented considering a dataset of thyroglobulin levels present in a group of individuals with differentiated cancer of thyroid. |
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Keywords: | Lindley distribution likelihood Bayesian analysis survival analysis |
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