Spatio-Temporal Multi-step Prediction of Influenza Outbreaks
Jie Zhang, Kazumitsu Nawata, Hongyan Wu

TL;DR
This paper develops a spatio-temporal multi-step prediction methodology for influenza outbreaks worldwide, demonstrating that incorporating spatial data improves forecast accuracy, especially for certain regions and forecast horizons.
Contribution
It introduces a spatio-temporal approach for multi-step flu outbreak prediction and compares machine learning models, highlighting the effectiveness of LSTM models with spatial data.
Findings
LSTM models achieved the lowest MAPEs in most cases.
Including other countries' data improves predictions for Northern hemisphere countries.
Including other countries' data increases MAPEs for Southern hemisphere countries.
Abstract
Flu circulates all over the world. The worldwide infection places a substantial burden on people's health every year. Regardless of the characteristic of the worldwide circulation of flu, most previous studies focused on regional prediction of flu outbreaks. The methodology of considering the spatio-temporal correlation could help forecast flu outbreaks more precisely. Furthermore, forecasting a long-term flu outbreak, and understanding flu infection trends more accurately could help hospitals, clinics, and pharmaceutical companies to better prepare for annual flu outbreaks. Predicting a sequence of values in the future, namely, the multi-step prediction of flu outbreaks should cause concern. Therefore, we highlight the importance of developing spatio-temporal methodologies to perform multi-step prediction of worldwide flu outbreaks. We compared the MAPEs of SVM, RF, LSTM models of…
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Taxonomy
TopicsInfluenza Virus Research Studies · Data-Driven Disease Surveillance · Anomaly Detection Techniques and Applications
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory · Support Vector Machine
