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Approximate Bayesian Confidence Intervals for the Mean of an Exponential Distribution Versus Fisher Matrix Bounds Models

机译:指数分布均值与Fisher矩阵界模型的均值的近似贝叶斯置信区间

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摘要

The aim of this article is to obtain and compare confidence intervals for the mean of an exponential distribution. Considering respectively the square error and the Higgins-Tsokos loss functions, approximate Bayesian confidence intervals for parameters of exponential population are derived. Using exponential data, the obtained approximate Bayesian confidence intervals will then be compared to the ones obtained with Fisher Matrix bounds method. It is shown that the proposed approximate Bayesian approach relies only on the observations. The Fisher Matrix bounds method, that uses the z-table, does not always yield the best confidence intervals, and the proposed approach often performs better.
机译:本文的目的是获取并比较指数分布平均值的置信区间。分别考虑平方误差和希金斯-索科斯损失函数,得出指数总体参数的近似贝叶斯置信区间。使用指数数据,然后将获得的近似贝叶斯置信区间与采用Fisher矩阵边界法获得的近似进行比较。结果表明,提出的近似贝叶斯方法仅依赖于观测值。使用z表的Fisher矩阵边界方法并不总是产生最佳的置信区间,并且所提出的方法通常效果更好。

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