{"title":"The Transform-Transformer Approach: Unveiling the Odd Transmuted Rayleigh-X Family of Distributions","authors":"J. Abdullahi, S. Gulumbe, U. Usman, A. I. Garba","doi":"10.57233/ijsgs.v9i2.462","DOIUrl":null,"url":null,"abstract":"The paper presents a novel class (family) of statistical distributions termed Odd Transmuted Rayleigh-X (OTR-X) that was created through a transform-transformer (T-X) approach. The CDF and PDF of the OTR-X family were derived. The available statistical literature studied earlier highlighted that almost all generalized distributions (in which one or more parameters were added) performed well and have better presentation of data than their counterparts with less number of parameters. This has motivated us to developed new family that is capable of producing new distributions. The research paper also presented a clear mathematical formula for several characteristics of the OTR-X family, such as the ordinary moments, moment generating, quantile, and reliability function. In order to find the estimate of the corresponding parameters of the OTR-X family, the technique of maximum likelihood is used in the study. A new sub-model Odd Transmuted Rayleigh Inversed Exponential Distribution (OTRIED) was generated from the OTR-X class and compared its performance to Transmuted Inversed Exponential Distribution (TIED), Exponential Inversed Exponential Distribution (EIED), and Inversed Exponential Distribution using two different datasets. The results have shown that the proposed distribution out performed its competitors when using two different real-world datasets. Furthermore, the proposed distribution can be practicalized to any skewed dataset.","PeriodicalId":332500,"journal":{"name":"International Journal of Science for Global Sustainability","volume":"49 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-08-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Science for Global Sustainability","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.57233/ijsgs.v9i2.462","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The paper presents a novel class (family) of statistical distributions termed Odd Transmuted Rayleigh-X (OTR-X) that was created through a transform-transformer (T-X) approach. The CDF and PDF of the OTR-X family were derived. The available statistical literature studied earlier highlighted that almost all generalized distributions (in which one or more parameters were added) performed well and have better presentation of data than their counterparts with less number of parameters. This has motivated us to developed new family that is capable of producing new distributions. The research paper also presented a clear mathematical formula for several characteristics of the OTR-X family, such as the ordinary moments, moment generating, quantile, and reliability function. In order to find the estimate of the corresponding parameters of the OTR-X family, the technique of maximum likelihood is used in the study. A new sub-model Odd Transmuted Rayleigh Inversed Exponential Distribution (OTRIED) was generated from the OTR-X class and compared its performance to Transmuted Inversed Exponential Distribution (TIED), Exponential Inversed Exponential Distribution (EIED), and Inversed Exponential Distribution using two different datasets. The results have shown that the proposed distribution out performed its competitors when using two different real-world datasets. Furthermore, the proposed distribution can be practicalized to any skewed dataset.
本文提出了一类新的统计分布,称为奇数变换瑞利- x (OTR-X),它是通过变压器-变压器(T-X)方法创建的。得到了OTR-X家族的CDF和PDF。先前研究的现有统计文献强调,几乎所有广义分布(其中添加了一个或多个参数)都表现良好,并且比具有较少参数的对应分布具有更好的数据表示。这促使我们开发能够产生新发行版的新家族。本文还对OTR-X族的普通矩、矩生成、分位数、可靠性函数等几个特性给出了明确的数学公式。为了找到OTR-X族对应参数的估计,研究中使用了极大似然技术。在OTR-X类的基础上,生成了一个新的奇异变换Rayleigh反指数分布子模型(otry),并将其与变换反指数分布(TIED)、指数反指数分布(EIED)和反指数分布进行了性能比较。结果表明,当使用两个不同的真实数据集时,所提出的分布优于其竞争对手。此外,所提出的分布可以应用于任何偏斜数据集。