使用间距函数对反林德雷自适应 I 型渐进删失样本进行 E-Bayesian 估计:比较研究与应用》。

IF 1.8 4区 计算机科学 Q3 ENGINEERING, BIOMEDICAL Applied Bionics and Biomechanics Pub Date : 2024-06-06 eCollection Date: 2024-01-01 DOI:10.1155/2024/5567457
Mazen Nassar, Refah Alotaibi, Ahmed Elshahhat
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引用次数: 0

摘要

本文首次提出了使用间距函数(SF)代替经典似然函数的贝叶斯和电子贝叶斯估计方法。本研究通过上述方法讨论了逆 Lindley 分布,包括其参数和可靠性度量,以及其他一些经典方法。研究还考虑了基于自适应 I 型逐步删减样本的六点和六区间估计。在经典推论设置中使用了似然法和间隔乘积法。使用这两种经典方法讨论了近似置信区间。对于各种参数,研究了贝叶斯方法,将似然法和 SFs 作为观测数据源,得出后验分布。此外,还考虑了 E-Bayesian 估计方法,即在通常的贝叶斯方法中使用相同的数据源。还考虑了使用似然和 SF 的贝叶斯和 E-Bayes 可信区间。根据不同的精度标准和实验情况,进行了若干蒙特卡罗实验,以评估所获得的估计器的性能。最后,对工程和物理领域的两个数据集进行了分析,以证明所建议方法的优越性和实用性。
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E-Bayesian Estimation Using Spacing Function for Inverse Lindley Adaptive Type-I Progressively Censored Samples: Comparative Study with Applications.

For the first time, this paper offers the Bayesian and E-Bayesian estimation methods using the spacing function (SF) instead of the classical likelihood function. The inverse Lindley distribution, including its parameter and reliability measures, is discussed in this study through the mentioned methods, along with some other classical approaches. Six-point and six-interval estimations based on an adaptive Type-I progressively censored sample are considered. The likelihood and product of spacing methods are used in classical inferential setups. The approximate confidence intervals are discussed using both classical approaches. For various parameters, the Bayesian methodology is studied by taking both likelihood and SFs as observed data sources to derive the posterior distributions. Moreover, the E-Bayesian estimation method is considered by using the same data sources in the usual Bayesian approach. The Bayes and E-Bayes credible intervals using both likelihood and SFs are also taken into consideration. Several Monte Carlo experiments are carried out to assess the performance of the acquired estimators, depending on different accuracy criteria and experimental scenarios. Finally, two data sets from the engineering and physics sectors are analyzed to demonstrate the superiority and practicality of the suggested approaches.

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来源期刊
Applied Bionics and Biomechanics
Applied Bionics and Biomechanics ENGINEERING, BIOMEDICAL-ROBOTICS
自引率
4.50%
发文量
338
审稿时长
>12 weeks
期刊介绍: Applied Bionics and Biomechanics publishes papers that seek to understand the mechanics of biological systems, or that use the functions of living organisms as inspiration for the design new devices. Such systems may be used as artificial replacements, or aids, for their original biological purpose, or be used in a different setting altogether.
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