Analyzing lifetime data with long-tailed skewed distribution: the logistic-sinh family

Kahadawala Cooray
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引用次数: 10

Abstract

A new two-parameter family of distribution is presented. It is derived to model the highly negatively skewed data with extreme observations. The new family of distribution is referred to as the logistic-sinh distribution, as it is derived from the logistic distribution by appropriately replacing an exponential term with a hyperbolic sine term. The resulting family provides not only negatively skewed densities with thick tails but also variety of monotonic density shapes. The space of shape parameter, lambda greater than zero is divided by boundary line of lambda equals one, into two regions over which the hazard function is, respectively, increasing and bathtub shaped. The maximum likelihood parameter estimation techniques are discussed by providing approximate coverage probabilities for uncensored samples. The advantages of using the new family are demonstrated and compared by illustrating well known examples.
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具有长尾偏态分布的寿命数据分析:logistic-sinh家族
提出了一种新的双参数分布族。它的推导是为了用极端观测值对高度负偏的数据进行建模。新的分布族被称为logistic-sinh分布,因为它是通过适当地用双曲正弦项取代指数项而从logistic分布中导出的。由此产生的家族不仅提供了具有厚尾的负偏斜密度,而且还提供了各种单调密度形状。形状参数λ大于0的空间被λ = 1的边界线划分为危害函数分别为递增和浴缸形的两个区域。通过提供未删节样本的近似覆盖概率,讨论了最大似然参数估计技术。通过一些众所周知的例子,对使用新家族的优点进行了论证和比较。
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