基于自适应型渐进式混合滤波的两指数种群重叠系数推断

IF 0.9 Q2 MATHEMATICS
Amal Helu
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引用次数: 0

摘要

本文考虑了Ng等人(Naval Res ologist 5(8): 687-698, 2009)引入的一种称为自适应ii型渐进式混合滤波方案的寿命测试方案。基于这种类型的审查,我们得出了关于三个著名的重叠度量的推论,即Matusita的度量(\( \rho \)), Morisita的度量(\(\lambda \))和Weitzman的(\(\Delta \))对于两个具有不同手段的指数总体。导出了重叠测度估计量的渐近偏差和方差。蒙特卡罗评估用于小样本量的情况,由于缺乏对其方差和精确抽样分布的封闭形式表达式,计算这些估计量的精度或偏差变得具有挑战性。通过自举法和泰勒展开近似构造了这些测度的置信区间。为了强调我们提出的估计器的实际相关性,我们使用头颈癌研究的真实数据集来说明它们的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Inference on overlapping coefficient in two exponential populations based on adaptive type-II progressive hybrid censoring

Inference on overlapping coefficient in two exponential populations based on adaptive type-II progressive hybrid censoring

This article considers a life test scheme called the adaptive type-II progressive hybrid censoring scheme introduced by Ng et al. (Naval Res Logist 5(8):687–698, 2009). Based on this type of censoring, we draw inferences about the three well-known measures of overlap, namely Matusita’s measure (\( \rho \)), Morisita’s measure (\(\lambda \)), and Weitzman’s (\(\Delta \)) for two exponential populations with different means. The asymptotic bias and variance of the overlap measure estimators are derived. Monte Carlo evaluations are employed in cases with small sample sizes, where computing the precision or bias of these estimators becomes challenging due to the lack of closed-form expressions for their variances and exact sampling distributions. Confidence intervals for those measures are also constructed via the bootstrap method and Taylor expansion approximation. To emphasize the practical relevance of our proposed estimators, we illustrate their application using a real data set from head and neck cancer research.

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来源期刊
Afrika Matematika
Afrika Matematika MATHEMATICS-
CiteScore
2.00
自引率
9.10%
发文量
96
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