Understanding Deep Neural Networks - CVPR 2020 iMLCV Tutorial

Understanding Deep Neural Networks - CVPR 2020 iMLCV Tutorial

Bolei Zhou via YouTube Direct link

Applications of Deep Learning

2 of 29

2 of 29

Applications of Deep Learning

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Understanding Deep Neural Networks - CVPR 2020 iMLCV Tutorial

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  1. 1 Intro
  2. 2 Applications of Deep Learning
  3. 3 Research Themes
  4. 4 Prior Work: Perturbation Approaches
  5. 5 Our Approach: Meaningful Perturbations
  6. 6 Our Approach: Extremal Perturbations
  7. 7 Interpretability
  8. 8 Foreground evidence is usually sufficient
  9. 9 Suppressing the background may overdrive the network
  10. 10 Adversarial Defense
  11. 11 Regularization to mitigate artifacts
  12. 12 Area Constraint
  13. 13 Smooth Masks
  14. 14 Comparison with Prior Work
  15. 15 Measure Performance on Weak Localization
  16. 16 Selectivity to Output Class
  17. 17 Sensitive to Model Parameters
  18. 18 Intermediate Activations
  19. 19 Spatial Attribution
  20. 20 Channel Attribution
  21. 21 Activation "Diffing"
  22. 22 # Concepts per Filter
  23. 23 # Filters per Concept
  24. 24 Self-Supervised Learning
  25. 25 Comparing Concept Embedding Spaces
  26. 26 Segmentation
  27. 27 Classification
  28. 28 Human-Guided Machine Learning
  29. 29 Future Work: Model Debugging

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