Learning Representations Using Causal Invariance - Leon Bottou

Learning Representations Using Causal Invariance - Leon Bottou

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Intro

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1 of 31

Intro

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Learning Representations Using Causal Invariance - Leon Bottou

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  1. 1 Intro
  2. 2 Joint work with
  3. 3 Summary
  4. 4 Why machine learning?
  5. 5 The statistical problem is only a proxy Example: detection of the action giving a phone call
  6. 6 A conjecture about adversarial features
  7. 7 Spurious correlations
  8. 8 Past observations
  9. 9 Nature does not shuffle the data. We do!
  10. 10 Multiple environments
  11. 11 Negative mixtures matter! Consider a search engine query classification problem
  12. 12 Learning stable properties
  13. 13 Invariance buys extrapolation powers
  14. 14 Trivial existence cases
  15. 15 Playing with the function family
  16. 16 Invariant representation
  17. 17 Finding the relevant variables
  18. 18 Invariance and causation
  19. 19 Invariance for causal inference
  20. 20 Invariant causal prediction
  21. 21 Adversarial Domain Adaptation
  22. 22 4- Robust supervised learning
  23. 23 The linear least square case
  24. 24 Issues
  25. 25 Characterization of the solutions
  26. 26 Rank of the feature matrix S
  27. 27 Exact recovery of high rank solutions Two set of environments
  28. 28 Nonlinear version
  29. 29 Colored MNIST
  30. 30 Scaling up invariant regularization
  31. 31 Phenomenon and interpretation

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