College of Marxism, Xiangtan University, Xiangtan, 411105, Hunan, China.
Sci Rep. 2023 Jan 30;13(1):1646. doi: 10.1038/s41598-023-28980-8.
Support vector machine (SVM) and genetic algorithm were successfully used to predict the changes in the prevalence rate (ΔPR) measured by the increase of reported cases per million population from the 16th to the 45th day during a nation's lockdown after the COVID-19 outbreak. The national cultural indices [individualism-collectivism (Ind), tightness-looseness (Tight)], and the number of people per square kilometer (Pop_density) were used to develop the SVM model of lnΔPR. The SVM model has R of 0.804 for the training set (44 samples) and 0.853 for the test set (11 samples), which were much higher than those (0.416 and 0.593) of the multiple linear regression model. The statistical results indicate that there are nonlinear relationships between lnΔPR and Tight, Ind, and Pop_density. It is feasible to build the model for lnΔPR with SVM algorithm. The results suggested that the risk of COVID-19 epidemic spread will be reduced if a nation implements severe measures to strengthen the tightness of national culture and individuals realize the importance of collectivism.
支持向量机(SVM)和遗传算法被成功用于预测 COVID-19 爆发后,一个国家在封锁期间,从第 16 天到第 45 天,以每百万人口报告病例数增加来衡量的流行率(ΔPR)的变化。采用国家文化指数[个体主义-集体主义(Ind),紧密度(Tight)]和每平方公里人数(Pop_density)来开发 SVM 模型以预测 lnΔPR。SVM 模型对训练集(44 个样本)的 R 值为 0.804,对测试集(11 个样本)的 R 值为 0.853,远高于多元线性回归模型的 R 值(0.416 和 0.593)。统计结果表明,lnΔPR 与 Tight、Ind 和 Pop_density 之间存在非线性关系。使用 SVM 算法建立 lnΔPR 模型是可行的。结果表明,如果一个国家实施加强国家文化紧密度的严厉措施,并且个人认识到集体主义的重要性,那么 COVID-19 疫情传播的风险将会降低。