{ "name": "49_Explainable_AI_LIME_Titanic_ML", "query": "Hi there! I'm looking to create a project that explains model predictions using LIME, specifically with the Titanic survival prediction dataset. First, load the dataset in `src/data_loader.py`.Then, train a Random Forest classifier and save it under `models/saved_models/`? Finally, use LIME to explain the Random Forest classifier predictions and implement it in `src/visualize.py`. Generate a report including the explanations and save it as `results/model_explanation.md`. The report should be built with either Dash or Bokeh, implemented in `src/report.py`, so users can explore how different features affect the model's predictions. The explanation should be clear and easy to understand for non-tech folks. Additionally, save a well-labeled intuitive feature importance plot in `results/figures/feature_importance.png`. Thanks!", "tags": [ "Classification" ], "requirements": [ { "requirement_id": 0, "prerequisites": [], "criteria": "The \"Titanic\" survival prediction dataset is loaded in `src/data_loader.py`.", "category": "Dataset or Environment", "satisfied": null }, { "requirement_id": 1, "prerequisites": [ 0 ], "criteria": "A \"Random Forest classifier\" is trained for survival prediction.", "category": "Machine Learning Method", "satisfied": null }, { "requirement_id": 2, "prerequisites": [ 0, 1 ], "criteria": "\"LIME\" is used for model prediction explanation and implemented in `src/visualize.py`.", "category": "Human Computer Interaction", "satisfied": null }, { "requirement_id": 3, "prerequisites": [ 0, 1, 2 ], "criteria": "A model prediction explanation report is generated and saved as `results/model_explanation.md`.", "category": "Other", "satisfied": null }, { "requirement_id": 4, "prerequisites": [ 2 ], "criteria": "A feature importance plot is saved as `results/figures/feature_importance.png`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 5, "prerequisites": [ 0, 1, 2, 4 ], "criteria": "An interactive report showcasing the impact of different features on predictions is created using \"Dash\" or \"Bokeh\" and implemented in `src/report.py`.", "category": "Other", "satisfied": null }, { "requirement_id": 6, "prerequisites": [ 1 ], "criteria": "The trained model is saved under `models/saved_models/`.", "category": "Save Trained Model", "satisfied": null } ], "preferences": [ { "preference_id": 0, "criteria": "The explanation report should be written in a clear and accessible style, making it understandable even for those without a deep technical background.", "satisfied": null }, { "preference_id": 1, "criteria": "The feature importance plot should be visually intuitive, with clear labels and descriptions.", "satisfied": null } ], "is_kaggle_api_needed": false, "is_training_needed": true, "is_web_navigation_needed": false }