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Coronavirus Disease (COVID-19) Global Prediction Using Hybrid Artificial Intelligence Method of ANN Trained with Grey Wolf Optimizer

机译:冠状病毒疾病(Covid-19)使用灰狼优化器训练的Ann培训的混合人工智能方法全球预测

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Advancement of the novel models for time-series prediction of COVID-19 is of utmost importance. Machine learning (ML) methods have recently shown promising results. The present study aims to engage an artificial neural network-integrated by grey wolf optimizer for COVID-19 outbreak predictions by employing the Global dataset. Training and testing processes have been performed by time-series data related to January 22 to September 15, 2020 and validation has been performed by time-series data related to September 16 to October 15, 2020. Results have been evaluated by employing mean absolute percentage error (MAPE) and correlation coefficient (r) values. ANN-GWO provided a MAPE of 6.23, 13.15 and 11.4% for training, testing and validating phases, respectively. According to the results, the developed model could successfully cope with the prediction task.
机译:Covid-19的时间序列预测的新型模型的进步至关重要。机器学习(ML)方法最近显示了有希望的结果。本研究旨在通过采用全球数据集来接合灰狼优化器的人工神经网络集成,用于Covid-19爆发预测。培训和测试过程已经通过与1月22日至9月15日相关的时间序列数据进行,2020年和验证已经通过与9月16日至10月15日至10月15日相关的时间序列数据进行。通过采用平均绝对百分比来评估结果错误(MAPE)和相关系数(R)值。 Ann-Gwo分别为培训,测试和验证阶段提供了6.23,13.15和11.4%的mape。根据结果​​,开发的模型可以成功应对预测任务。

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