Prediction of the number of COVID-19 confirmed cases using the hybrid FUCOM-Pareto analysis- random forest method

Seda Hatice Gökler
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Abstract

After the COVID-19 epidemic, which emerged in December 2019 and is still in effect, almost all countries had to implement strict measures to control the spread of the virus. The ability of experts to reduce the spread primarily depends on the determination of the criteria affecting the spread. The fact many criteria that affect the rate of spread of COVID-19 and the most effective criteria cannot be determined, causes the spread, and therefore the number of positive cases and deaths to increase. Therefore, in the study;firstly, the weights of the criteria affecting the rate of spread were determined by using the full consistency method (FUCOM), which is a multi-criteria decision-making method, and the criteria that most affected the spread were determined by Pareto analysis, based on the criteria weights obtained. Then, based on the criteria obtained, the number of confirmed cases was predicted using the random forest method. The performance criteria values of the random forest were compared with different artificial intelligence methods such as artificial neural network, decision tree and support vector machine. Random forest gave the best results with error values (RMSE (3247), MAE (1714) and RRSE (0.374)). In addition, the random forest achieved a high prediction success of 92.9%.
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使用混合FUCOM-Pareto分析-随机森林方法预测COVID-19确诊病例数
2019年12月新冠肺炎疫情爆发后,几乎所有国家都不得不采取严格措施控制病毒传播。专家减少传播的能力主要取决于确定影响传播的标准。影响COVID-19传播速度的许多标准和最有效的标准无法确定,导致传播,因此阳性病例和死亡人数增加。因此,在本研究中,首先采用多准则决策方法——完全一致性法(FUCOM)确定影响传播率的准则权重,并根据得到的准则权重,采用Pareto分析法确定影响传播率最大的准则。然后,根据得到的准则,采用随机森林方法预测确诊病例数。将随机森林的性能标准值与人工神经网络、决策树和支持向量机等不同的人工智能方法进行比较。随机森林以误差值(RMSE(3247)、MAE(1714)和RRSE(0.374))给出了最好的结果。此外,随机森林的预测成功率高达92.9%。
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来源期刊
自引率
25.00%
发文量
49
审稿时长
25 weeks
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