Taimisson/breast-cancer-wdbc-ml
End-to-end machine learning pipeline for breast cancer diagnosis (malignant vs. benign) using the Wisconsin WDBC dataset. Achieved 96.5% accuracy with Logistic Regression. Features: EDA, feature selection, model training, and interpretability analysis.
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3
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Jupyter Notebook
License
MIT
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Last pushed
Feb 14, 2026
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0
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