4.6 Article

Influenza trend prediction method combining Baidu index and support vector regression based on an improved particle swarm optimization algorithm

Journal

AIMS MATHEMATICS
Volume 8, Issue 11, Pages 25528-25549

Publisher

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/math.20231303

Keywords

influenza; web search data; prediction model; principal component analysis; support vector regression; improved PSO algorithm

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Web-based search query data analysis can effectively predict the spread of influenza, but selecting keywords and prediction methods are key challenges for improving prediction accuracy. This study built an influenza prediction model based on historical data and keywords, and proposed a new optimization algorithm to enhance prediction accuracy.
Web-based search query data have been recognized as valuable data sources for discovering new influenza epidemics. However, selecting search and query keywords and adopting prediction methods pose key challenges to improving the effectiveness of influenza prediction. In this study, web search data were analyzed and excavated using big data and machine learning methods. The flu prediction model for the southern region of China, considering the impact of influenza transmission across regions and based on various keywords and historical influenza-like illness percentage (ILI%) data, was built (models 1-4) to verify the factors affecting the spread of the flu. To improve the accuracy of the influenza trend prediction, a support vector regression method based on an improved particle swarm optimization algorithm was proposed (IPSO-SVR), which was applied to the influenza prediction model to forecast ILI% in southern China. By comparing and analyzing the prediction results of each model, model 4, using the IPSO-SVR algorithm, exhibited higher prediction precision and more effective results, with its prediction indexes including the mean square error (MSE), root mean square error (RMSE) and mean absolute error ( MAE) being 0.0596, 0.2441 and 0.1884, respectively. The experimental results show that the prediction precision significantly increased when the IPSO-SVR method was applied to the constructed ILI% model. A new theoretical basis and implementation strategy were provided for achieving more accurate influenza prevention and control in southern China.

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