{ "name": "20_Car_Price_Prediction_RandomForest_CarPrices_ML", "query": "Can you help me create a car price prediction project using a Random Forest model with the Kaggle Car Prices dataset? Load the dataset and perform feature selection to identify important features in `src/data_loader.py`. Use cross-validation to evaluate the model in `src/train.py`. Save the R-squared score, Mean Squared Error (MSE), and Mean Absolute Error (MAE) to `results/metrics/results/metrics.txt`. Visualize the feature importance and save it to `results/figures/feature_importance.png`. Generate a Markdown report with insights into how the selected features contribute to the car price predictions. Saving the report as `results/report.md`.", "tags": [ "Financial Analysis", "Regression", "Supervised Learning" ], "requirements": [ { "requirement_id": 0, "prerequisites": [], "criteria": "The \"Kaggle Car Prices\" dataset is loaded in `src/data_loader.py`.", "category": "Dataset or Environment", "satisfied": null }, { "requirement_id": 1, "prerequisites": [ 0 ], "criteria": "Feature selection is implemented to identify important features in `src/data_loader.py`.", "category": "Data preprocessing and postprocessing", "satisfied": null }, { "requirement_id": 2, "prerequisites": [], "criteria": "The \"Random Forest\" regression model is used in `src/model.py`.", "category": "Machine Learning Method", "satisfied": null }, { "requirement_id": 3, "prerequisites": [ 0, 1, 2 ], "criteria": "Cross-validation is used to evaluate the model in `src/train.py`.", "category": "Performance Metrics", "satisfied": null }, { "requirement_id": 4, "prerequisites": [ 1, 2, 3 ], "criteria": "The \"R-squared\" score, \"Mean Squared Error (MSE),\" and \"Mean Absolute Error (MAE)\" are saved in `results/metrics/results/metrics.txt`.", "category": "Performance Metrics", "satisfied": null }, { "requirement_id": 5, "prerequisites": [ 1, 2, 3 ], "criteria": "Feature importances are visualized and saved as `results/figures/feature_importance.png`.", "category": "Visualization", "satisfied": null }, { "requirement_id": 6, "prerequisites": [ 1, 2, 3, 4, 5 ], "criteria": "A Markdown file containing results and visualizations is generated and saved as `results/report.md`.", "category": "Visualization", "satisfied": null } ], "preferences": [ { "preference_id": 0, "criteria": "The feature selection process should be thorough, ensuring that only the most relevant features are used in the model.", "satisfied": null }, { "preference_id": 1, "criteria": "The Markdown report should provide clear insights into how the selected features contribute to the car price predictions.", "satisfied": null } ], "is_kaggle_api_needed": true, "is_training_needed": true, "is_web_navigation_needed": false }