论文标题
揭开台湾同性恋的动态特征的隐式人类行为影响台湾的动态特征
Unraveling implicit human behavioral effects on dynamic characteristics of Covid-19 daily infection rates in Taiwan
论文作者
论文摘要
我们研究了COVID-19,在她原始的激增时期,与84个地区有关的84个地区的Covid-19感染率的传播动力学扩散。我们的计算发展始于从每个平滑区特异性曲线中选择和提取18个功能。计算工作的这一步骤允许将非结构化数据转换为结构化数据,然后我们证明了所有相关曲线之间的不对称增长和下降动态。具体而言,基于条件熵和相互信息的理论信息测量值,我们计算顺序1和订单2的主要因素,这些因素揭示了影响曲线峰值的峰值和曲率在峰值下的显着影响,这是表征所有曲线的两个基本特征。此外,我们通过编码具有两个二元特征的每个84个地区中的每一个:North-Vs-South和Unban-VS-Suburban来调查并证明确定地理和社会经济引起的行为影响的主要因素。此外,根据该地区尺度的这种数据驱动的知识,我们继续研究台北12个城市中12个城市区域内96个年龄段的每日感染率的相似性,对传播的高度行为影响,对新台北城市的12个郊区的每日感染率的相似,这是该台北城市的12个郊区,这是该岛屿国家总人群的几乎四分之一的人数。我们得出的结论是,人类的生活,旅行和工作行为确实隐含地影响了台湾遍布台湾的Covid-19的传播动态。
We study Covid-19 spreading dynamics underlying 84 curves of daily Covid-19 infection rates pertaining to 84 districts belonging to the largest seven cities in Taiwan during her pristine surge period. Our computational developments begin with selecting and extracting 18 features from each smoothed district-specific curve. This step of computing effort allows unstructured data to be converted into structured data, with which we then demonstrate asymmetric growth and decline dynamics among all involved curves. Specifically, based on Theoretical Information measurements of conditional entropy and mutual information, we compute major factors of order-1 and order-2 that reveal significant effects on affecting the curves' peak value and curvature at peak, which are two essential features characterizing all the curves. Further, we investigate and demonstrate major factors determining the geographic and social-economic induced behavioral effects by encoding each of these 84 districts with two binary characteristics: North-vs-South and Unban-vs-suburban. Furthermore, based on this data-driven knowledge on the district scale, we go on to study fine-scale behavioral effects on infectious disease spreading through similarity among 96 age-group-specific curves of daily infection rate within 12 urban districts of Taipei and 12 suburban districts of New Taipei City, which counts for almost one-quarter of the island nation's total population. We conclude that human living, traveling, and working behaviors do implicitly affect the spreading dynamics of Covid-19 across Taiwan profoundly.