基于浴缸形故障率模型的双变量故障时间数据统计分析

IF 0.1 Q4 STATISTICS & PROBABILITY
S. Shoaee
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引用次数: 0

摘要

对于真实数据,许多分布都显示了浴缸状的故障率。Chen(2000)定义了一个双参数分布。这种分布可以具有浴缸状或增加故障率的功能。在本文中,我们考虑了两个基于Chen提出的分布的双变量模型,并在双变量情况下使用Marshall和Olkin(1967)提出的方法,在单变量情况下采用Marshall和奥尔金(1997)提出的方式。在第二种情况下,将他们的方法推广到二元情况,并引入了一种新的二元分布。这些新的二元分布具有自然的解释,它们可以应用于致命冲击模型或竞争风险模型。我们将这些新分布分别称为二元Chen(BCH)分布和二元Chen几何(BCHG)分布。此外,BCH可以作为BCHG模型的特殊情况来获得。然后,研究了新分布的各种性质。BCHG分布有五个参数,并且最大似然估计量不能以闭合形式获得。我们建议使用非常容易实现的EM算法。此外,还进行了蒙特卡洛模拟,以研究所提出算法的有效性。最后,为了便于说明,我们分析了两个真实的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Analysis of Bivariate Failure Time Data based on Bathtub-shaped Failure Rate Model
Many distributions have been presented with bathtub-shaped failure rates for real-life data. A two-parameter distribution was defined by Chen (2000). This distribution can have a bathtub-shaped or increasing failure rate function. In this paper, we consider two bivariate models based on the proposed distribution by Chen and use the proposed methods of Marshall and Olkin (1967) in the bivariate case and Marshall and Olkin (1997) in the univariate case. In the second case, their method is generalized to the bivariate case and a new bivariate distribution is introduced. These new bivariate distributions have natural interpretations, and they can be applied in fatal shock models or in competing risks models. We call these new distributions as the bivariate Chen (BCH) distribution and bivariate Chen-geometric (BCHG) distribution, respectively. Moreover, the BCH can be obtained as a special case of the BCHG model. Then, the various properties of the new distributions are investigated. The BCHG distribution has five parameters and the maximum likelihood estimators cannot be obtained in a closed form. We suggest using an EM algorithm that is very easy to implement. Also, Monte Carlo simulations are performed to investigate the effectiveness of the proposed algorithm. Finally, we analyze two real data sets for illustrative purposes.
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CiteScore
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