{ "name": "17_Heart_Disease_Prediction_XGBoost_UCI_ML", "query": "Create a project to predict heart disease using an XGBoost model with the UCI Heart Disease dataset, which can be downloaded from [this link](https://archive.ics.uci.edu/dataset/45/heart+disease). Load the dataset in `src/data_loader.py`. Implement feature selection and data standardization in `src/data_loader.py`. Use SHAP values to explain the feature importance, and save the results as `results/figures/shap_importance.png`. Implement the XGBoost model in `src/model.py`. Then, use SHAP values to explain the feature importance, and save the results as `results/shap_importance.png`. Save the ROC curve to `results/figures/roc_curve.png`. Finally, generate an HTML report containing all the results and visualizations, and save it as `results/report.html`. Ensure the SHAP visualizations clearly highlight the most impactful features. Include a performance comparison with another model, such as Logistic Regression, to validate the robustness of the XGBoost model. Save the XGBoost model under `models/saved_models/`.", "tags": [ "Classification", "Medical Analysis", "Supervised Learning" ], "requirements": [ { "requirement_id": 0, "prerequisites": [], "criteria": "The \"UCI Heart Disease\" dataset is used, potentially being downloaded from [this link](https://archive.ics.uci.edu/dataset/45/heart+disease). Load the dataset in `src/data_loader.py`.", "category": "Dataset or Environment", "satisfied": null }, { "requirement_id": 1, "prerequisites": [ 0 ], "criteria": "Feature selection is implemented in `src/data_loader.py`.", "category": "Data preprocessing and postprocessing", "satisfied": null }, { "requirement_id": 2, "prerequisites": [ 0 ], "criteria": "Data standardization which ensures feature values are within the same range is implemented in `src/data_loader.py`.", "category": "Data preprocessing and postprocessing", "satisfied": null }, { "requirement_id": 3, "prerequisites": [], "criteria": "The \"XGBoost\" model is implemented in `src/model.py`.", "category": "Machine Learning Method", "satisfied": null }, { "requirement_id": 4, "prerequisites": [ 0, 1, 2, 3 ], "criteria": "\"SHAP\" values are used for feature importance explanation, with results saved as `results/figures/shap_importance.png`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 5, "prerequisites": [ 0, 1, 2, 3 ], "criteria": "The ROC curve saved as `results/figures/roc_curve.png`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 6, "prerequisites": [ 0, 1, 2, 3, 4, 5 ], "criteria": "An HTML report containing results and visualizations is generated, saved as `results/report.html`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 7, "prerequisites": [ 1, 2, 3 ], "criteria": "A performance comparison with another model (e.g., Logistic Regression) is included to validate the robustness of the XGBoost model.", "category": "Other", "satisfied": null }, { "requirement_id": 8, "prerequisites": [ 1, 2, 3 ], "criteria": "A XGBoost model is saved under `models/saved_models/`.", "category": "Save Trained Model", "satisfied": null } ], "preferences": [ { "preference_id": 0, "criteria": "The SHAP visualizations should be clear and highlight the most impactful features, making the results easy to interpret.", "satisfied": null } ], "is_kaggle_api_needed": false, "is_training_needed": true, "is_web_navigation_needed": true }