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Python:
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R:
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Python, R or other:
- Global and Local Explanations of a Constrained Model
- Building from Penalized GLM to Monotonic GBM
- Monotonic XGBoost models, partial dependence, individual conditional expectation plots, and Shapley explanations
- Decision tree surrogates, LOCO, and ensembles of explanations
- Machine Learning for High-risk Applications: Use Cases (Chapter 6)
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Introduction and Background:
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Post-hoc Explanation Techniques:
- A Unified Approach to Interpreting Model Predictions
- Anchors: High-Precision Model-Agnostic Explanations
- Elements of Statistical Learning - Section 10.13
- Extracting Tree-Structured Representations of Trained Networks
- Interpretability via Model Extraction
- Interpretable Machine Learning - Chapter 6 and Chapter 7
- Peeking Inside the Black Box: Visualizing Statistical Learning with Plots of Individual Conditional Expectation
- Towards Better Understanding of Gradient-based Attribution Methods for Deep Neural Networks
- Visualizing the Effects of Predictor Variables in Black Box Supervised Learning Models
- “Why Should I Trust You?” Explaining the Predictions of Any Classifier
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Problems with Post-hoc Explanation: