ScoreCardModel
ScoreCardModel is a professional and modern toolset for scorecard modeling, fully compatible with scikit-learn. It is designed for credit risk analysts and data scientists who need to build transparent, regulator-friendly scoring models with ease.
Key Features
- ๐ Scikit-Learn Compatible: Use
BinningTransformer,WOETransformer, andScoreCardTransformerdirectly in your pipelines. - ๐ Rich Analytics: 18+ plot types (KS, ROC, CAP, Lift, Calibration, PSI, etc.) for comprehensive model evaluation.
- ๐ Automated Reporting: Generate professional Markdown or Excel reports with one function call.
- ๐ 5 WOE Methods: Choose between standard, adjusted, empirical logit, signed, and weighted Weight of Evidence.
- ๐ฎ Interactive Dashboard: A Jupyter-based what-if widget for real-time scorecard testing.
- ๐ข Industry Standard: Built-in support for PDO (Points to Double Odds) and Base-Odds scaling.
Documentation Sections
๐ Getting Started
- Installation โ Install via pip or uv.
- Quickstart โ Build your first scorecard in minutes.
๐ User Guides
- WOE In-Depth Guide โ Deep dive into WOE methods, diagnostics, and IV interpretation.
- Best Practices โ Guidelines for developing robust credit risk scorecards.
๐ API Reference
- Full API Reference โ Detailed documentation for all modules and classes.
๐งช Examples
- Full Examples โ End-to-end scorecard development with real-world datasets.
- Interactive Notebook โ Live what-if widget in action.
License
This project is licensed under the MIT License - see the LICENSE file for details.