Title of article :
A Comparative Study on the Prediction of Occupational Diseases in China with Hybrid Algorithm Combing Models
Author/Authors :
Lu, Yaoqin Department of Occupational and Environmental Health - College of Public Health - Xinjiang Medical University - Wulumuqi - Xinjiang, China , Yan, Huan Xinjiang Autonomous Academy of Instrumental Analysis - Urumqi - Xinjiang, China , Zhang, Lijiang Department of Occupational Disease Prevention and Control - Wulumuqi Center for Disease Control and Prevention - Wulumuqi - Xinjiang, China , Liu, Jiwen Department of Occupational and Environmental Health - College of Public Health - Xinjiang Medical University - Wulumuqi - Xinjiang, China
Abstract :
Occupational disease is a huge problem in China, and many workers are under risk. Accurate forecasting of occupational disease
incidence can provide critical information for prevention and control. ,erefore, in this study, five hybrid algorithm combing
models were assessed on their effectiveness and applicability to predict the incidence of occupational diseases in China. ,e five
hybrid algorithm combing models are the combination of five grey models (EGM, ODGM, EDGM, DGM, and Verhulst) and five
state-of-art machine learning models (KNN, SVM, RF, GBM, and ANN). ,e quality of the models were assessed based on the
accuracy of model prediction as well as minimizing mean absolute percentage error (MAPE) and root-mean-squared error
(RMSE). Our results showed that the GM-ANN model provided the most precise prediction among all the models with lowest
mean absolute percentage error (MAPE) of 3.49% and root-mean-squared error (RMSE) of 1076.60. ,erefore, the GM-ANN
model can be used for precise prediction of occupational diseases in China, which may provide valuable information for the
prevention and control of occupational diseases in the future.
Keywords :
Occupational , China , Hybrid , GM-ANN
Journal title :
Computational and Mathematical Methods in Medicine