基于大样本双参数指数分布的未来广义序统计量预测

IF 2.3 2区 工程技术 Q3 ENGINEERING, INDUSTRIAL
H. M. Barakat, M. E. El-Adll, Amany E. Aly
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引用次数: 2

摘要

摘要详细讨论了基于双参数指数分布的未来广义阶统计量的两个均方误差一致点预测器的精确和渐近分布性质。即使一些观察到的数据缺失,这些预测因子也能发挥作用。对于每个点预测器,当标度参数已知或未知时,推导出未来GOS与其点预测器之间归一化差的渐近分布。结果表明,当标度参数已知时,这些归一化差的渐近分布是相等的。只要标度参数已知或未知,就构造了未来GOS的两个渐近预测区间。此外,还提出了两种基于点预测因子的异常值检验方法。最后,进行了仿真研究,并对实际数据集进行了分析,以便于说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of future generalized order statistics based on two-parameter exponential distribution for large samples
ABSTRACT Exact and asymptotic distributional properties are discussed in detail for two mean-squared error consistent point predictors of future-generalized order statistics (GOSs) based on two-parameter exponential distribution. These predictors work even if some observed data were missing. For each point predictor, the asymptotic distribution of the normalized difference between the future GOS and its point predictor is derived, when the scale parameter is known or unknown. It is revealed that the asymptotic distributions of these normalized differences are equal when the scale parameter is known. Two asymptotic prediction intervals of the future GOS are constructed whenever the scale parameter is known or unknown. Furthermore, two tests of outliers are proposed relying on the point predictors. Finally, a simulation study is conducted and a real data set is analyzed for illustrative purposes.
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来源期刊
Quality Technology and Quantitative Management
Quality Technology and Quantitative Management ENGINEERING, INDUSTRIAL-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
5.10
自引率
21.40%
发文量
47
审稿时长
>12 weeks
期刊介绍: Quality Technology and Quantitative Management is an international refereed journal publishing original work in quality, reliability, queuing service systems, applied statistics (including methodology, data analysis, simulation), and their applications in business and industrial management. The journal publishes both theoretical and applied research articles using statistical methods or presenting new results, which solve or have the potential to solve real-world management problems.
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