Farrukh Jamal, Hesham Reyad, S. Ahmed, Syed Muhammad Akbar Ali Shah
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引用次数: 0
摘要
This paper presents the details of a proposed continuous model for the minimum Gumbel Burr distribution which is based on four different parameters. 该模型由Gumbel - ii型和Burr-XII分布复合得到。研究了新分布的基本数学性质,包括分位数函数、普通矩和不完全矩、矩生成函数、序统计量、r熵、应力-强度模型和随机排序。利用极大似然法估计了所提出分布的参数。提出了蒙特卡罗模拟来检验参数估计的行为。通过三种应用评估了该模型的灵活性。
MATHEMATICAL PROPERTIES AND APPLICATIONS OF MINIMUM GUMBEL BURR DISTRIBUTION
This paper presents the details of a proposed continuous model for the minimum Gumbel Burr distribution which is based on four different parameters. The model is obtained by compounding the Gumbel type-II and Burr-XII distributions. Basic mathematical properties of the new distribution were studied including the quantile function, ordinary and incomplete moments, moment generating function, order statistics, Rényi entropy, stress-strength model and stochastic ordering. The parameters of the proposed distribution are estimated using the maximum likelihood method. A Monte Carlo simulation was presented to examine the behaviour of the parameter estimates. The flexibility of the proposed model was assessed by means of three applications.