人工神经网络在印度尼西亚 COVID-19 患者死亡率建模中的应用

Rika Fitriani, Ruth Cornelia Nugraha
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摘要

.由于 Covid-19 患者的感染率和死亡率上升,印度尼西亚政府和公共医疗系统承受着巨大的压力。我们需要一个合适的模型来模拟印尼 Covid-19 患者的死亡率,以帮助印尼政府制定正确的政策来应对 Covid-19 大流行。人工神经网络在各个研究领域越来越受欢迎。人工神经网络可以检测死亡率建模中的特定模式。在本研究中,我们使用人工神经网络来模拟印度尼西亚 Covid-19 患者的死亡率。我们尝试了激活函数、学习率和隐藏层的组合,以获得最佳预测结果。我们比较了人工神经网络和 Holt-Winters 方法的预测准确性。结果显示,人工神经网络的最佳模型产生的均方根误差为 3.0530。而 Holt-Winters 方法产生的均方根误差为 664.9022。因此,在分析印度尼西亚 Covid-19 患者的死亡率数据时,人工神经网络比 Holt-Winters 方法表现更好。
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ARTIFICIAL NEURAL NETWORK APPLICATION IN MODELING MORTALITY OF COVID-19 PATIENTS IN INDONESIA
. The Indonesian government and public healthcare system have been under massive pressure due to increased infections and mortality rates among Covid-19 patients. An appropriate model is needed to model the mortality of Covid-19 patients in Indonesia to help the Indonesian government develop the right policy for dealing with the Covid-19 pandemic. Artificial neural networks are increasingly popular in various research fields. Artificial neural networks can detect specific patterns in mortality modeling. In this study, we use artificial neural networks to model the mortality rate of Covid-19 patients in Indonesia. We try combinations of activation functions, learning rates, and hidden layers for the best predictions. We compare the prediction accuracy of artificial neural networks with that of the Holt-Winters method. The results showed that the best model of artificial neural networks produced an RMSE of 3.0530. In contrast, the Holt-Winters method produced an RMSE of 664.9022. Therefore, the artificial neural networks performed better than the Holt-Winters method in analyzing mortality data of Covid-19 patients in Indonesia.
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