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Python:
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R:
- Increase Fairness in Your Machine Learning Project with Disparate Impact Analysis using Python and H2O
- Testing a Constrained Model for Discrimination and Remediating Discovered Discrimination
- Machine Learning for High-risk Applications: Use Cases (Chapter 10)
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Introduction and Background:
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Discrimination Testing and Remediation Techniques:
- An Empirical Comparison of Bias Reduction Methods on Real-World Problems in High-Stakes Policy Settings
- Certifying and Removing Disparate Impact
- Data Preprocessing Techniques for Classification Without Discrimination
- Decision Theory for Discrimination-aware Classification
- Fairness Beyond Disparate Treatment & Disparate Impact: Learning Classification Without Disparate Mistreatment
- Learning Fair Representations
- Mitigating Unwanted Biases with Adversarial Learning