用修正幂函数分布和修正估计量研究化疗治疗和器械失效时间数据的不对称方法

A. Zaka, A. Akhter, R. Jabeen
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引用次数: 2

摘要

为了改进生物科学和应用科学研究中广泛使用的现有模型,提出了一类新的加权幂函数分布(WPFD),它具有多种性质,并进行了不同的修改,使其更适用于现实生活。我们给出了新分布的数学推导,包括矩、不完全矩、条件矩、逆矩、平均残差函数、活力函数、阶统计量、米尔斯比、信息函数、香农熵、Bonferroni和Lorenz曲线以及分位数函数。我们还描述了基于双重截断均值的WPFD。研究的目的是增加幂函数分布的应用。与具有许多参数的复杂分布的其他推广分布相比,该分布的主要特征是没有参数的归纳。我们使用R编程,利用极大似然法(MLM)、百分位估计器(pe)及其改进估计器对新一类WPFD的参数进行了估计。通过对数据的分析,我们得出结论,与不同的竞争模型相比,所提出的模型WPFD在数据集中表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asymmetry approach to study for chemotherapy treatment and devices failure time's data using modified power function distribution with some modified estimators
In order to improve the already existing models that are used extensively in bio sciences and applied sciences research, a new class of Weighted Power function distribution (WPFD) has been proposed with its various properties and different modifications to be more applicable in real life. We have provided the mathematical derivations for the new distribution including moments, incomplete moments, conditional moments, inverse moments, mean residual function, vitality function, order statistics, mills ratio, information function, Shannon entropy, Bonferroni and Lorenz curves and quantile function. We have also characterized the WPFD, based on doubly truncated mean. The aim of the study is to increase the application of the Power function distribution. The main feature of the proposed distribution is that there is no induction of parameters as compare to the other generalization of the distributions, which are complexed having many parameters. We have used R programming to estimate the parameters of the new class of WPFD using Maximum Likelihood Method (MLM), Percentile Estimators (P.E) and their modified estimators. After analyzing the data, we conclude that the proposed model WPFD performs better in the data sets while compared to different competitor models.
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