![]() The suggested model’s efficiency is examined by accuracy, precision, recall, specificity, and f1-score as performance metrics, and compared with other models such as ACO-ANN, PSO-RF, WO-RF, and ANOVA-SVM. The proposed model is a hybrid approach that includes feature selection using the Antlion Optimization Algorithm (ALO) and classification using Random Forest (RF) integrated with the XG-Boost technique. The model uses real-time data collected from different regions around Madurai district between 20, with 29 features including illness such as dengue, malaria, pneumonia, typhoid, kala-azar, Japanese encephalitis, measles, and normal fever and cold infections. In this research, a machine learning-based prediction model is suggested for predicting seasonality diseases. Predicting disease outbreaks accurately can aid in gaining control of epidemic seasons. The effective management of seasonal dengue fever and other viral diseases fever such as malaria, pneumonia, and typhoid fever requires the early deployment of control measures.
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