Abstract

New coronavirus disease (COVID-19) has constituted a global pandemic and has spread to most countries and regions in the world. Through understanding the development trend of confirmed cases in a region, the government can control the pandemic by using the corresponding policies. However, the common traditional mathematical differential equations and population prediction models have limitations for time series population prediction, and even have large estimation errors. To address this issue, we propose an improved method for predicting confirmed cases based on LSTM (Long-Short Term Memory) neural network. This work compares the deviation between the experimental results of the improved LSTM prediction model and the digital prediction models (such as Logistic and Hill equations) with the real data as reference. Furthermore, this work uses the goodness of fitting to evaluate the fitting effect of the improvement. Experiments show that the proposed approach has a smaller prediction deviation and a better fitting effect. Compared with the previous forecasting methods, the contributions of our proposed improvement methods are mainly in the following aspects: 1) we have fully considered the spatiotemporal characteristics of the data, rather than single standardized data. 2) the improved parameter settings and evaluation indicators are more accurate for fitting and forecasting. 3) we consider the impact of the epidemic stage and conduct reasonable data processing for different stage.

Highlights

  • At the beginning of 2020, COVID-19 was spread worldwide [World Health Organization (2020)]

  • To address the problem of deviation and accuracy in predicting the number of confirmed cases in traditional methods, we propose an improved method based on long-term short-term memory system (LSTM) neural network

  • The prediction of the diagnosis number of new coronavirus can be regarded as time series prediction, and the LSTM model has a good effect on time series prediction

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Summary

Introduction

At the beginning of 2020, COVID-19 was spread worldwide [World Health Organization (2020)]. The analysis and prediction of COVID-19 is a vital prerequisite for formulating infectious disease prevention and control strategies. The prediction of infectious diseases is an important task in health work, which will detect the development trend of the CMC. Disease early and increase the predictability of the epidemic prevention work [Wang Xinzhi; Liu Yi; Zhang Hui; Ma Qiuju; Cao Zhidong. It plays an essential rule in disease prevention, treatment and health decision-making. The confirmed cases prediction model for COVID-19 is still in the research and exploration stage. How to use machine learning to predict the effect still needs more experiments to verify

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