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Forecasting Influenza Based on Autoregressive Moving Average and Holt-Winters Exponential Smoothing Models

Guohun Zhu, Liping Li, Yuebin Zheng, Xiaowei Zhang, Hui Zou

2021Journal of Advanced Computational Intelligence and Intelligent Informatics10 citationsDOIOpen Access PDF

Abstract

Influenza outbreaks can be effectively prevented if further outbreaks are predicted as early as possible. This article proposes an autoregressive integrated moving average (ARIMA) model and a Holt-Winters exponential smoothing (HWES) model to analyze tweet data for predicting influenza outbreaks and to visualize the number of flu-infection-related tweets with heat maps. First, textual influenza data for Australia from June 2015 to June 2017 are collected through the Twitter Application Programming Interface (API). Next, the ARIMA and HWES models are applied to predict the difference between the flu tweets and confirmations from the Centers for Disease Control and Prevention. Finally, a visualized heat map based on influenza topics validates the modeling analysis in two different time zones. The results show that the average relative error of the ARIMA (HWES) model is 7.25% (11.29%) for the one-week flu forecast.

Topics & Concepts

Autoregressive integrated moving averageExponential smoothingComputer scienceAutoregressive modelOutbreakMoving averageSmoothingSeasonal influenzaTime seriesEconometricsOperations researchData miningStatisticsCoronavirus disease 2019 (COVID-19)Machine learningMathematicsInfectious disease (medical specialty)VirologyComputer visionBiologyDiseaseMedicinePathologyData-Driven Disease SurveillanceInfluenza Virus Research StudiesCOVID-19 epidemiological studies
Forecasting Influenza Based on Autoregressive Moving Average and Holt-Winters Exponential Smoothing Models | Litcius