Generative Adversarial Models for Privacy and Fairness

Generative Adversarial Models for Privacy and Fairness

Simons Institute via YouTube Direct link

Example: GAPF under log-loss

14 of 25

14 of 25

Example: GAPF under log-loss

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Generative Adversarial Models for Privacy and Fairness

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Zero-sum games
  3. 3 Generative Adversarial Networks (GANS)
  4. 4 Why not using GANs as they are?
  5. 5 Membership inference attacks for GANS
  6. 6 Differential Privacy (DP) to the rescue!
  7. 7 TensorFlow Privacy
  8. 8 Differentially private GANS (DP-GAN)
  9. 9 DP-GAN: noisy Wasserstein GAN
  10. 10 DP-GAN results
  11. 11 Context-aware fair data publishing
  12. 12 Empirical risk minimization with MI?
  13. 13 Generative Adversarial Privacy & Fairness (GAPF)
  14. 14 Example: GAPF under log-loss
  15. 15 Data-driven GAPF
  16. 16 Penalty method
  17. 17 Real-life data: GENKI dataset
  18. 18 Adversary's neural network
  19. 19 Feedforward Neural Network (FNN) encoder
  20. 20 Transposed Convolution Neural Network (TCNNP) encoder
  21. 21 GENKI fairness vs utility
  22. 22 Siamese-GAPF (S-GAPF) What if the sensitive label can take many values?
  23. 23 Real-life data: HAR dataset
  24. 24 HAR fairness vs utility
  25. 25 Gaussian mixture data model

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.