Shailja12326646 / Anaemia-Type-PredictionLinks
This project predicts the type of Anaemia in patients using machine learning techniques, specifically the XGBoost algorithm and a Sacking Ensemble Classifier.. After preprocessing the data , we apply XGBoost—a powerful gradient boosting framework known for its accuracy and efficiency—as a base model.
☆12Updated 8 months ago
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