连续功率林德利分布的离散模拟及其应用

R. P. D. Oliveira, J. Mazucheli, Márcia Lorena Alves dos Santos, K. V. P. Barco
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引用次数: 2

摘要

近几十年来,人们广泛考虑了产生连续分布的离散模拟的方法。一般来说,离散化过程包括将连续属性转换为离散属性,生成新的概率分布,这些概率分布可以替代传统的离散模型,如泊松模型和二项模型,这些模型通常用于计数数据的分析。它还避免了在分析严格离散数据时使用连续。本文采用基于生存函数的离散化方法,给出了功率林德利分布的离散模拟。研究了一些数学性质。在估计和渐近推理问题上考虑了极大似然理论。为了评价所提出模型的最大似然估计量的一些性质,还进行了仿真研究。使用文献提供的真实数据集评估了所提出模型的有用性和准确性。
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A DISCRETE ANALOGUE OF THE CONTINUOUS POWER LINDLEY DISTRIBUTION AND ITS APPLICATIONS
Methods to generate a discrete analogue of a continuous distribution have been widely considered in recent decades. In general, the discretization procedure comprises in transform continuous attributes into discrete attributes generating new probability distributions that could be an alternative to the traditional  discrete models, such as Poisson and Binomial models, commonly used in analysis of count data. It also  avoids the use of continuous in the analysis of strictly discrete data. In this paper, using the discretization  method based on the survival function, it is introduced a discrete analogue of power Lindley distribution. Some mathematical properties are studied. The maximum likelihood theory is considered for estimation and asymptotic inference concerns. A simulation study is also carried out in order to evaluate some properties of the maximum likelihood estimators of the proposed model. The usefulness and accurate of the proposed model are evaluated using real datasets provided by the literature.
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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