Artificial Intelligence Forecasting of Covid-19 in China
Zixin Hu, Qiyang Ge, Shudi Li, Li Jin, Momiao Xiong

TL;DR
This study introduces an AI-based forecasting model using a modified auto-encoder to predict Covid-19 transmission dynamics across China, achieving high accuracy and aiding public health decision-making.
Contribution
The paper presents a novel AI-inspired forecasting approach with a modified auto-encoder for real-time Covid-19 transmission prediction in China.
Findings
Forecasted Covid-19 cases with low error margins
Predicted epidemic peak around mid-April 2020
Grouped provinces into 9 transmission clusters
Abstract
BACKGROUND An alternative to epidemiological models for transmission dynamics of Covid-19 in China, we propose the artificial intelligence (AI)-inspired methods for real-time forecasting of Covid-19 to estimate the size, lengths and ending time of Covid-19 across China. METHODS We developed a modified stacked auto-encoder for modeling the transmission dynamics of the epidemics. We applied this model to real-time forecasting the confirmed cases of Covid-19 across China. The data were collected from January 11 to February 27, 2020 by WHO. We used the latent variables in the auto-encoder and clustering algorithms to group the provinces/cities for investigating the transmission structure. RESULTS We forecasted curves of cumulative confirmed cases of Covid-19 across China from Jan 20, 2020 to April 20, 2020. Using the multiple-step forecasting, the estimated average errors of 6-step, 7-step,…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Data-Driven Disease Surveillance · COVID-19 diagnosis using AI
