!!This is the GitHub repository for my first research paper! This project focuses on predicting heart attack risk using advanced machine learning models and explainability techniques like SHAP analysis.
๐ About the Research
- This study uses XGBoost and Random Forest to predict heart attack risks based on the data.
- SHAP explainability helps interpret the modelโs decision-making process for transparency.
- The goal is to contribute to trustworthy AI-driven healthcare.
-->Features
- Machine Learning Models โ XGBoost, Random Forest, and Logistic Regression for risk prediction.
- Explainability with SHAP โ Helps understand feature importance in predictions.
- Data Processing & Analysis โ Uses Pandas, NumPy, Matplotlib and Seaborn for visualization.
- Preprint & Publication โ Hosted on ResearchGate & Zenodo for open access.
๐ Read the Full Paper:
๐ ResearchGate: https://www.researchgate.net/publication/392693726_Heart_Attack_Risk_Prediction_Using_Machine_Learning_and_SHAP_Explainability
๐ Zenodo DOI: https://zenodo.org/records/15663652
๐ค Contributions & Feedback
--Have feedback on the paper? Please comment on ResearchGate or submit an issue here!
--Want to collaborate? Reach out via LinkedIn or GitHub Discussions!