Bootstrap Confidence Intervals for the Poisson-Pranav Distribution Parameter with an Application to COVID-19 Data

W. Panichkitkosolkul
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Abstract

The Poisson distribution is commonly applied in statistical modeling to represent the count of events, assuming that the events are independent and occur at a constant rate. This assumption, however, may not always hold true in real-life situations. The Poisson distribution may be inadequate if the underlying rate of occurrence is not constant. The mixed Poisson distribution is proposed to solve this limitation because it permits the rate parameter of the Poisson distribution to be random rather than fixed. The Poisson-Pranav distribution, which is classified as a type of mixed Poisson distribution, has been commonly utilized to analyze count data that exhibits over-dispersion over many domains. However, no research has been done into building confidence intervals for the parameter of the Poisson-Pranav distribution using the bootstrap method. Using Monte Carlo simulation, the coverage probabilities and average lengths of the percentile bootstrap (PB), basic bootstrap (BB), and biased-corrected and accelerated (BCa) bootstrap’s interval-estimation performances were compared. The bootstrap method was not appropriate for achieving the desired nominal confidence level with small sample sizes. In addition, the performance of the bootstrap confidence intervals did not differ significantly when the sample size was increased considerably. In each case studied, the BCa bootstrap confidence intervals performed better than the others. The effectiveness of bootstrap confidence intervals was demonstrated by applying them to the number of COVID-19 deaths in Belgium. The computations substantially supported the proposed bootstrap confidence intervals.
泊松-普拉纳夫分布参数的 Bootstrap 置信区间与 COVID-19 数据的应用
在统计建模中,泊松分布通常用于表示事件的计数,假设事件是独立的,并且以恒定的速率发生。然而,在现实生活中,这一假设并不总是成立的。如果基本的发生率不是恒定的,泊松分布就可能不够充分。混合泊松分布允许泊松分布的速率参数是随机的,而不是固定的,因此被提出来解决这一限制。Poisson-Pranav 分布被归类为混合泊松分布的一种,常用于分析在许多领域表现出过度分散的计数数据。然而,目前还没有研究利用自举法建立泊松-普拉纳夫分布参数的置信区间。通过蒙特卡罗模拟,比较了百分位自举法(PB)、基本自举法(BB)和有偏校正加速自举法(BCa)的覆盖概率和平均长度。在样本量较小的情况下,自举法不适合达到理想的名义置信水平。此外,当样本量大幅增加时,bootstrap 置信区间的性能也没有显著差异。在研究的每种情况下,BCa 引导置信区间的表现都优于其他方法。通过对比利时 COVID-19 死亡人数的应用,证明了 bootstrap 置信区间的有效性。计算结果大大支持了建议的自举置信区间。
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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