A new unimodal distribution family indexed by the mode and three other parameters is derived from a mixture of a Gumbel distribution for the maximum and a Gumbel distribution for the minimum. Properties of the proposed distribution are explored, including model identifiability and flexibility in capturing heavy-tailed data that exhibit different directions of skewness over a wide range. Both frequentist and Bayesian methods are developed to infer parameters in the new distribution. Simulation studies are conducted to demonstrate satisfactory performance of both methods. By fitting the proposed model to simulated data and data from an application in hydrology, it is shown that the proposed flexible distribution is especially suitable for data containing extreme values in either direction, with the mode being a location parameter of interest. A regression model concerning the mode of a response given covariates based on the proposed unimodal distribution can be easily formulated, which we apply to data from an application in criminology to reveal interesting data features that are obscured by outliers.
翻译:以该模式和另外三个参数为索引的新单式分布式分布式组系,按该模式和另外三个参数,取自为最大值的 Gumbel 分布式组和最小值的 Gumbel 分布式组的混合体。将探讨拟议分布式的属性,包括模型可识别性和灵活性,以捕捉在广泛范围内显示不同偏差方向的重尾数据。常客和巴耶斯人的方法都用来推断新分布式的参数。进行模拟研究以显示两种方法的令人满意的性能。通过将拟议的模型与模拟数据和水文学应用中的数据相匹配,可以表明提议的灵活分布式特别适合含有任一方向极端值的数据,而模式是关注的定位参数。可以很容易地拟订关于根据拟议单式分布式分布法给出的响应式共变法模式的回归模型,我们用于从犯罪学应用中的数据,以揭示出被外部线模糊的有趣数据特征。