A Multi-Group Approach to Algorithmic Fairness - IPAM at UCLA

A Multi-Group Approach to Algorithmic Fairness - IPAM at UCLA

Institute for Pure & Applied Mathematics (IPAM) via YouTube Direct link

Predictive Algorithms Everywhere

1 of 9

1 of 9

Predictive Algorithms Everywhere

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A Multi-Group Approach to Algorithmic Fairness - IPAM at UCLA

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  1. 1 Predictive Algorithms Everywhere
  2. 2 Concern: Discrimination
  3. 3 THE* Definition of Fairness?
  4. 4 Risk Prediction: Setup and Goal
  5. 5 Group Notions of Fairness
  6. 6 Multicalibration: Flavor of Results
  7. 7 Density Plot: Group (mis)Calibration
  8. 8 Post-Procesing for Multi-Calibration
  9. 9 Beyond Multi-Calibration

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