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Multi-Model Selection and Analysis for COVID-19

机译:Covid-19的多模型选择和分析

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In the face of an increasing number of COVID-19 infections, one of the most crucial and challenging problems is to pick out the most reasonable and reliable models. Based on the COVID-19 data of four typical cities/provinces in China, integer-order and fractional SIR, SEIR, SEIR-Q, SEIR-QD, and SEIR-AHQ models are systematically analyzed by the AICc, BIC, RMSE, and R means. Through extensive simulation and comprehensive comparison, we show that the fractional models perform much better than the corresponding integer-order models in representing the epidemiological information contained in the real data. It is further revealed that the inflection point plays a vital role in the prediction. Moreover, the basic reproduction numbers R0 of all models are highly dependent on the contact rate.
机译:面对越来越多的Covid-19感染,最重要和最具挑战性的问题之一是挑选出最合理和最可靠的模型。 根据中国四个典型城市/省份的Covid-19数据,由AICC,BIC,RMSE和SEIR,SEIR-Q,SEIR-QD和SEIR-AHQ模型进行整数和分数SIR,SIR,SEIR-Q,SEIR-QD和SEIR-AHQ模型 r表示。 通过广泛的仿真和全面的比较,我们表明,分数模型比表示实际数据中包含的流行病学信息的相应整数模型更好。 进一步揭示了拐点在预测中起着至关重要的作用。 此外,所有模型的基本再现号R0高度依赖于接触率。

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