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引用次数: 0
摘要
在分析二元数据集时,经常会遇到具有共同观测值的数据,在这种情况下,现有的 绝对连续二元分布并不适用。只有少数几个模型,如 Marshall 和 Olkin 提出的双变量分布(J Am Stat Assoc 62(317):30-44, 1967),被用来模拟这类数据集,而用于拟合具有共同观测值的数据集的模型选择非常有限。本文开发了三类通用的双变量分布,用于对具有共同观测值的数据建模。为了建立双变量分布,我们采用了可靠性概率模型。考虑到一个系统有两个组件,假定当组件的第一个故障以某种概率发生时,会立即导致剩余组件的故障,并且以互补概率,剩余组件的剩余寿命会按照某种随机顺序缩短。我们将证明,通过指定联合分布中包含的基本分布,可以生成众多的二元分布系列。因此,这项工作大大提高了对具有共同观测数据集建模的灵活性。开发的模型拟合了两个现实生活中的数据集,结果表明这些模型在拟合性能方面优于现有模型,其表现令人满意。
General classes of bivariate distributions for modeling data with common observations
In analyzing bivariate data sets, data with common observations are frequently encountered and, in this case, existing absolutely continuous bivariate distributions are not applicable. Only a few models, such as the bivariate distribution proposed by Marshall and Olkin (J Am Stat Assoc 62(317):30–44, 1967), have been developed to model such data sets and the choice of models to fit data sets having common observations is very limited. In this paper, three general classes of bivariate distributions for modeling data with common observations are developed. To develop the bivariate distributions, we employ a probability model in reliability. Considering a system with two components, it is assumed that, when the first failure of the components occurs, with some probability, it immediately causes the failure of the remaining component, and, with complementary probability, the residual lifetime of the remaining component is shortened according to some stochastic order. It will be shown that, by specifying the underlying distributions contained in the joint distribution, numerous families of bivariate distributions can be generated. Therefore, this work provides substantially increased flexibility in modeling data sets with common observations. The developed models are fitted to two real-life data sets and it is shown that these models outperform the existing models in terms of fitting performance and their performances are satisfactory.
期刊介绍:
The journal Statistical Papers addresses itself to all persons and organizations that have to deal with statistical methods in their own field of work. It attempts to provide a forum for the presentation and critical assessment of statistical methods, in particular for the discussion of their methodological foundations as well as their potential applications. Methods that have broad applications will be preferred. However, special attention is given to those statistical methods which are relevant to the economic and social sciences. In addition to original research papers, readers will find survey articles, short notes, reports on statistical software, problem section, and book reviews.