The spread of the global COVID-19 pandemic affected Sri Lanka similar to how it affected other countries across the globe. The Sri Lankan government took many preventive measures to suppress the pandemic spread. To aid policy makers in taking these preventive measures, we propose a novel district-wise clustering based approach. Using freely available data from the Epidemiological Department of Sri Lanka, a cluster analysis was carried out based on the COVID-19 data and the demographic data of districts. K-Means clustering and spectral clustering models were the selected clustering techniques in this study. From the many district-wise socio-economic factors, population, population density, monthly expenditure and the education level were identified as the demographic variables that exhibit a high similarity with COVID-19 clusters. This approach will positively impact the preventive measures suggested by the relevant policy making parties of the Sri Lankan government.
翻译:全球COVID-19大流行的蔓延对斯里兰卡的影响与它对全球其他国家的影响相似。斯里兰卡政府采取了许多预防措施来遏制这一流行病的蔓延。为了帮助决策者采取这些预防措施,我们提议一种基于地区分组的新办法。利用斯里兰卡流行病学部免费提供的数据,根据COVID-19数据和各地区的人口数据进行了群集分析。K-Means群集和光谱群集模型是本研究中选定的群集技术。从许多地区性社会经济因素中,人口、人口密度、月支出和教育水平被确定为与COVID-19大群具有高度相似性的人口变数。这一办法将对斯里兰卡政府相关决策方建议的预防措施产生积极影响。