Real-world growth processes, such as epidemic growth, are inherently noisy, uncertain and often involve multiple growth phases. The logistic-sigmoid function has been suggested and applied in the domain of modelling such growth processes. However, existing definitions are limiting, as they do not consider growth as restricted in two-dimension. Additionally, as the number of growth phases increase, the modelling and estimation of logistic parameters becomes more cumbersome, requiring more complex tools and analysis. To remedy this, we introduce the nlogistic-sigmoid function as a compact, unified modern definition of logistic growth for modelling such real-world growth phenomena. Also, we introduce two characteristic metrics of the logistic-sigmoid curve that can give more robust projections on the state of the growth process in each dimension. Specifically, we apply this function to modelling the daily World Health Organization published COVID-19 time-series data of infection and death cases of the world and countries of the world to date. Our results demonstrate statistically significant goodness of fit greater than or equal to 99% for affected countries of the world exhibiting patterns of either single or multiple stages of the ongoing COVID-19 outbreak, such as the USA. Consequently, this modern logistic definition and its metrics, as a machine learning tool, can help to provide clearer and more robust monitoring and quantification of the ongoing pandemic growth process.
翻译:实际世界增长过程,如流行病增长,本身就杂乱、不确定,往往涉及多个增长阶段。物流类组功能已经建议并应用于模拟这种增长过程的领域。但是,现有定义正在受到限制,因为它们并不认为增长在两个方面受到限制。此外,随着增长阶段的增加,物流参数的建模和估计变得更加繁琐,需要更复杂的工具和分析。为了纠正这一点,我们引入了物流类组功能,作为构建这种真实世界增长现象模型的物流增长的紧凑、统一现代定义。此外,我们引入了物流类组曲线的两个特征指标,可以对每个方面的增长过程的状况作出更强有力的预测。具体地说,我们应用这一功能来模拟世界卫生组织每天公布的COVID-19时间序列世界和世界各国的感染和死亡案例数据。我们的结果表明,在统计学上,受影响世界国家比99%更适合或等于99%的物流增长模式,展示了当前COVID-19爆发的单一或多个阶段,从而能够更有力地预测每个层面的增长状况。我们应用这一功能来模拟世界卫生组织公布CVID-19的传染和死亡案例系列数据,从而提供更精确的系统、更精确的系统、更精确的系统化、更精确的统计工具。