基于记录数据的瑞利置信区域

M. Abdi, A. Asgharzadeh
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引用次数: 3

摘要

。基于记录数据,给出了瑞利分布参数的精确联合置信区域。通过提供适当的关键量,构造了Rayleigh参数的联合置信区域。这些联合置信区域对于构造未知参数函数的置信区域是有用的。为了说明目的,介绍了使用两个环境数据集的联合置信区域的应用。最后,进行了仿真研究,研究了所提出的联合置信区域的性能。
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Rayleigh Confidence Regions based on Record Data
. This paper presents exact joint confidence regions for the parameters of the Rayleigh distribution based on record data. By providing some appropriate pivotal quantities, we construct several joint confidence regions for the Rayleigh parameters. These joint confidence regions are useful for constructing confidence regions for functions of the unknown parameters. Applications of the joint confidence regions using two environmental data sets are presented for illustrative purposes. Finally, a simulation study is conducted to study the performance of the proposed joint confidence regions.
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