利用长短期记忆估计和分析Covid-19在土耳其的传播

Güneş Güçlü, Ahmed Al-Dulaimi
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引用次数: 1

摘要

2019年12月下旬开始的COVID-19病毒继续在世界许多国家迅速传播。由于其传染性和传播速度快,对各国经济、医疗、社会和所有其他领域造成巨大危害。因此,有必要预测疫情的演变和传播。通过了解一个地区确诊病例的发展趋势,政府可以通过推出适当的计划和指示来控制疫情。许多科学家试图用传统的数学方法来预测病例的数量;然而,常用的传统数学微分方程在估计时间序列数据中的病例数时存在局限性,甚至存在较大的估计误差。为了解决这个问题,我们提出了一种改进的基于LSTM (long-term memory)神经网络的状态预测方法。由于传统的预测模型只预测累积病例数,因此它们预计感染率会一直上升,而无法预测病毒的传播何时会减少或结束,因此我们的模型建立在短期记忆基础上,预测每日病例数,而不是累积病例数(LSTM)。
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Estimating and analyzing the spread of Covid-19 in Turkey using Long Short-Term Memory
The COVID-19 virus that began in late December 2019 continues to spread rapidly in many countries around the world. Due to its contagious and fast-spreading nature, it causes great harm to countries economically, medically, socially and in all other areas. Therefore, it is imperative to predict the evolution and spread of the epidemic. By understanding the trend of developing confirmed cases in an area, governments can control the epidemic by launching appropriate plans and instructions.Many scientists have tried to predict the number of cases using traditional mathematical techniques; however, the common traditional mathematical differential equations have limitations in estimating cases numbers in time series data and even have major errors in estimation. To solve this problem, we propose an improved method for predicting validated states based on the LSTM (long-term memory) neural network.Since the traditional prediction models predict the number of cumulative cases only, so they expect that the rate of infections will always rise and they cannot predict when the spread of the virus will decrease or end, so our model is built on short-term memory that predicts the number of daily cases but not the number of cumulative cases (LSTM).
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