jprmaulion/cholera-gedeo-ethiopia-ml-modeling
Predictive modeling of cholera severity in the Gedeo Zone, Ethiopia, using epidemiological and clinical data. This notebook applies machine learning techniques, including feature engineering, Bayesian hyperparameter optimization, and classification with XGBoost and Random Forest.
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MIT
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Oct 31, 2025
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