Confidence Interval for the Difference Between Variances of Delta-Gamma Distribution

Q2 Engineering
Wansiri Khooriphan, S. Niwitpong, Suparat Niwitpong
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引用次数: 1

Abstract

Since environmental data are often right-skewed, the gamma distribution is commonly used to model them. However, rainfall data often contain zero observations, so the delta-gamma model is a better fit in these circumstances. Since the variance of delta-gamma distributions is a useful measure of rainfall dispersion, we focused on the difference between the variances of two delta-gamma populations for comparison of the precipitation in two areas in Thailand. We constructed the confidence interval for the difference between the variances of delta-gamma distributions by using various Bayesian and highest posterior density (HPD) methods based on the Jeffrey’s, uniform, or normal-gamma-beta priors and compared with the fiducial quantity (FQ) approach. The performances of the proposed confidence interval methods were evaluated by examining their coverage probabilities and average lengths via a Monte Carlo simulation study. The results indicate that for a small probability of zero observations (δ), the confidence intervals based on FQ and HPD with either the Jeffrey’s or uniform priors are suitable whereas for large δ, the HPD with the normal-gamma-beta prior is recommended. Rainfall data from Lamphun province, Thailand, are used to illustrate the practical efficacies of the proposed methods.
δ - γ分布方差之差的置信区间
由于环境数据通常是右偏的,所以伽马分布通常用于对它们进行建模。然而,降雨数据通常包含零观测值,因此delta-gamma模型更适合这些情况。由于delta-gamma分布的方差是降雨分散的有用度量,因此我们将重点放在两个delta-gamma种群的方差之间的差异上,以比较泰国两个地区的降水。我们使用基于Jeffrey先验、均匀先验或正态γ - β先验的各种贝叶斯和最高后验密度(HPD)方法,并与基准量(FQ)方法进行比较,构建了δ - γ分布方差之间差异的置信区间。通过蒙特卡罗模拟研究,通过检查其覆盖概率和平均长度来评估所提出的置信区间方法的性能。结果表明,当观测值为零(δ)的概率较小时,基于FQ和HPD的置信区间可以采用Jeffrey’s或均匀先验,而对于较大的δ,建议采用正态γ - β先验的HPD。泰国兰埔省的降雨数据被用来说明所提出方法的实际有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Science and Engineering Progress
Applied Science and Engineering Progress Engineering-Engineering (all)
CiteScore
4.70
自引率
0.00%
发文量
56
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