论文标题
使用类规则挖掘和模式匹配分析全球人口特征对COVID-19扩散的影响
Analysing the impact of global demographic characteristics over the COVID-19 spread using class rule mining and pattern matching
论文作者
论文摘要
自2019年12月的冠状病毒病(COVID-19)暴发以来,研究一直在解决与COVID-19的不同方面,以及202012/01(VOC 202012/01)的关注变体,例如潜在症状和预测工具。然而,在全球联合人口属性和变化性质之间进行复杂关联的建模,已经进行了有限的工作。这项研究提出了一种智能方法,以研究人口属性与COVID-19全球变化之间的多维关联。我们从可靠的来源收集了多个人口统计学属性和COVID-19感染数据(到2021年1月8日),然后通过智能算法对其进行处理,以识别数据中的重要关联和模式。统计结果和专家的报告表明,全球共同程度的严重程度与某些人口属性之间的牢固关联,例如女性吸烟者与其他属性结合在一起。结果将有助于理解疾病传播的动态及其进步的动力,进而可以支持政策制定者,医学专家和社会,以更好地理解和有效地管理该疾病。
Since the coronavirus disease (COVID-19) outbreak in December 2019, studies have been addressing diverse aspects in relation to COVID-19 and Variant of Concern 202012/01 (VOC 202012/01) such as potential symptoms and predictive tools. However, limited work has been performed towards the modelling of complex associations between the combined demographic attributes and varying nature of the COVID-19 infections across the globe. This study presents an intelligent approach to investigate the multi-dimensional associations between demographic attributes and COVID-19 global variations. We gather multiple demographic attributes and COVID-19 infection data (by 8 January 2021) from reliable sources, which are then processed by intelligent algorithms to identify the significant associations and patterns within the data. Statistical results and experts' reports indicate strong associations between COVID-19 severity levels across the globe and certain demographic attributes, e.g. female smokers, when combined together with other attributes. The outcomes will aid the understanding of the dynamics of disease spread and its progression, which in turn may support policy makers, medical specialists and society, in better understanding and effective management of the disease.