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COVID-19 Time Series Forecasting of Daily Cases, Deaths Caused and Recovered Cases using Long Short Term Memory Networks

机译:使用长期短期记忆网络的COVID-19时间序列预测每日病例,致死病例和恢复病例

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Novel Coronavirus (COVID-19) outbreak that emerged originally in Wuhan, the Hubei province of China has put the entire human race at risk. This virus was declared as Pandemic on 11th March 2020. Considering the massive growth rate in the number of cases and highly contagious nature of the virus, machine learning prediction models and algorithms are essential to predict the number of cases in the coming days. This could help in reducing the stress on health care systems and administrations by helping them plan better. In this paper the datasets used are obtained from the John Hopkins University’s publicly available datasets to develop a state-of-the-art forecasting model of COVID-19 outbreak. We have incorporated data-driven estimations and time series analysis to predict the trends in coming days such as the number of cases confirmed positive, number of deaths caused by the virus and number of people recovered from the novel coronavirus. To achieve the estimations, we have used the Deep learning model long-shortterm memory network (LSTM).
机译:最初在中国湖北省武汉市出现的新型冠状病毒(COVID-19)爆发使整个人类处于危险之中。该病毒于11日宣布为大流行病 2020年3月。考虑到病例数的快速增长和病毒的高度传染性,机器学习预测模型和算法对于预测未来几天的病例数至关重要。通过帮助他们更好地计划,可以帮助减轻对医疗保健系统和行政管理机构的压力。在本文中,所使用的数据集是从约翰·霍普金斯大学的公开数据集中获得的,以开发出最先进的COVID-19暴发预测模型。我们结合了数据驱动的估计和时间序列分析,以预测未来几天的趋势,例如确诊为阳性的病例数,由病毒引起的死亡人数和从新型冠状病毒中恢复的人数。为了实现估计,我们使用了深度学习模型长期短期记忆网络(LSTM)。

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