Interpretation of ML Models
  • Shapash: Making ML Models Understandable by Everyone (link)
  • Explainable AI Cheat Sheet (link)
  • Explain Your Model with the SHAP Values (link)
  • SHAP Doc (link)
  • SHAP git (link)
  • Interpretable Machine Learning - Christoph Molnar - Book (link)
  • Guide to Interpretable Machine Learning (link)
  • Intuitive Interpretation of Random Forest (link)
  • Increasing Tree Classifier interpretability with SHAP (link)
  • Random Forest Interpretation (link)
  • treeinterpreter - Interpreting Tree-Based Model’s Prediction of Individual Sample (link)
  • Why is that house so expensive? Ask a Random Forest! (link)
  • Interpretable Machine Learning with Python (link)
  • ELI5 Doc (link)
  • Demystifying Model Interpretation using ELI5 (link)
  • How to Use eli5 to Understand sklearn Models, their Performance, and their Predictions (link)
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