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A New Family of Generalized Distributions Based on Alpha Power Transformation with Application to Cancer Data

机译:基于Alpha幂变换的新的广义分布族及其在癌症数据中的应用

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In this paper, we propose a new method for generating distributions based on the idea of alpha power transformation introduced by Mahdavi and Kundu (Commun Stat Theory Methods 46(13):6543–6557, 2017). The new method can be applied to any distribution by inverting its quantile function as a function of alpha power transformation. We apply the proposed method to the Weibull distribution to obtain a three-parameter alpha power within Weibull quantile function. The new distribution possesses a very flexible density and hazard rate function shapes which are very useful in cancer research. The hazard rate function can be increasing, decreasing, bathtub or upside down bathtub shapes. We derive some general properties of the proposed distribution including moments, moment generating function, quantile and Shannon entropy. The maximum likelihood estimation method is used to estimate the parameters. We illustrate the applicability of the proposed distribution to complete and censored cancer data sets.
机译:在本文中,我们基于Mahdavi和Kundu提出的α幂变换的思想(Commun Stat Theory Methods 46(13):6543–6557,2017)提出了一种新的分布生成方法。通过将其分位数函数作为α幂变换的函数进行求逆,可以将新方法应用于任何分布。我们将提出的方法应用于Weibull分布以获得Weibull分位数函数内的三参数α幂。新的分布具有非常灵活的密度和危害率函数形状,这在癌症研究中非常有用。危险率函数可以是增加,减少,浴缸或倒置的浴缸形状。我们推导了所提出的分布的一些一般性质,包括矩,矩产生函数,分位数和香农熵。最大似然估计方法用于估计参数。我们说明了建议的分布适用于完整和审查的癌症数据集。

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