论文标题

流行病学的K统计量方法

The k-statistics approach to epidemiology

论文作者

Kaniadakis, Giorgio, Baldi, Mauro M., Deisboeck, Thomas S., Grisolia, Giulia, Hristopulos, Dionissios T., Scarfone, Antonio M., Sparavigna, Amelia, Wada, Tatsuaki, Lucia, Umberto

论文摘要

各种各样的复杂的物理,自然和人工系统受统计分布的约束,统计分布经常遵循批量的标准指数功能,而尾巴则遵守帕累托力量法。最近引入的$κ$统计框架可以通过此功能预测分配功能。越来越多的不同调查领域应用程序开始证明$κ$统计量在拟合经验数据中的相关性和有效性。在本文中,我们使用$κ$统计量来制定一种流行病学分析的统计方法。 We validate the theoretical results by fitting the derived $κ$-Weibull distributions with data from the plague pandemic of 1417 in Florence as well as data from the COVID-19 pandemic in China over the entire cycle that concludes in April 16, 2020. As further validation of the proposed approach we present a more systematic analysis of COVID-19 data from countries such as Germany, Italy, Spain and United Kingdom, obtaining very good agreement between理论预测和经验观察。对于这些国家,我们还研究了整个大流行的第一个周期,直到2020年7月底。事实是,佛罗伦萨瘟疫的数据和covid-19的大流行的数据都被同一理论模型成功地描述了,即使这两个事件是由不同的疾病引起的,它们是由不同的疾病引起的,并且它们均被600多年分开,这是$κ$ -Webib $ -weib $ -Weib $ -weib $ -weib的特征。

A great variety of complex physical, natural and artificial systems are governed by statistical distributions, which often follow a standard exponential function in the bulk, while their tail obeys the Pareto power law. The recently introduced $κ$-statistics framework predicts distribution functions with this feature. A growing number of applications in different fields of investigation are beginning to prove the relevance and effectiveness of $κ$-statistics in fitting empirical data. In this paper, we use $κ$-statistics to formulate a statistical approach for epidemiological analysis. We validate the theoretical results by fitting the derived $κ$-Weibull distributions with data from the plague pandemic of 1417 in Florence as well as data from the COVID-19 pandemic in China over the entire cycle that concludes in April 16, 2020. As further validation of the proposed approach we present a more systematic analysis of COVID-19 data from countries such as Germany, Italy, Spain and United Kingdom, obtaining very good agreement between theoretical predictions and empirical observations. For these countries we also study the entire first cycle of the pandemic which extends until the end of July 2020. The fact that both the data of the Florence plague and those of the Covid-19 pandemic are successfully described by the same theoretical model, even though the two events are caused by different diseases and they are separated by more than 600 years, is evidence that the $κ$-Weibull model has universal features.

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