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Highest posterior density estimation from multiply censored Pareto data

机译:根据多重删失的帕累托数据进行最高后验密度估计

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摘要

In statistical practice, it is quite common that some data are unknown or disregarded for various reasons. In the present paper, on the basis of a multiply censored sample from a Pareto population, the problem of finding the highest posterior density (HPD) estimates of the inequality and precision parameters is discussed assuming a natural joint conjugate prior. HPD estimates are obtained in closed forms for complete or right censored data. In the general multiple censoring case, it is shown the existence and uniqueness of the estimates. Explicit lower and upper bounds are also provided. Due to the posterior unimodality, HPD credibility regions are simply connected sets. For illustration, two numerical examples are included.
机译:在统计实践中,由于各种原因,某些数据未知或被忽略是很常见的。在本文中,基于来自Pareto人口的多重删失样本,假设先验自然联合共轭,讨论了寻找不等式和精度参数的最高后验密度(HPD)估计的问题。 HPD估计数以封闭形式获得,以获取完整或正确的审查数据。在一般的多重删失情况下,证明了估计的存在性和唯一性。还提供了明确的下限和上限。由于后单峰,HPD可信度区域是简单的连接集。为了说明,包括两个数值示例。

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