The Mother of All Representer Theorems for Inverse Problems and Machine Learning - Michael Unser

The Mother of All Representer Theorems for Inverse Problems and Machine Learning - Michael Unser

Alan Turing Institute via YouTube Direct link

Intro

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1 of 22

Intro

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The Mother of All Representer Theorems for Inverse Problems and Machine Learning - Michael Unser

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  1. 1 Intro
  2. 2 Variational formulation of inverse problem
  3. 3 Learning as a (linear) inverse problem
  4. 4 RKHS representer theorem for machine learning
  5. 5 Is there a mother of all representer theorems?
  6. 6 General notion of Banach space
  7. 7 Dual of a Banach space
  8. 8 Riesz conjugate for Hilbert spaces
  9. 9 Generalization: Duality mapping
  10. 10 Properties of duality mapping
  11. 11 Mother of all representer theorems (Cont'd)
  12. 12 Kernel methods for machine learning
  13. 13 Tikhonov regularization (see white board)
  14. 14 Qualitative effect of Banach conjugation
  15. 15 Sparsity promoting regularization
  16. 16 Extreme points
  17. 17 Geometry of 12 vs. l, minimization
  18. 18 Isometry with space of Radon measures
  19. 19 Sparse kernel expansions (Cont'd)
  20. 20 Special case: Translation-invariant kernels
  21. 21 RKHS vs. Sparse kernel expansions (LSI)
  22. 22 Conclusion (Cont'd)

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