An Overview of Local Explainability Methods and Their Evaluation in AI

An Overview of Local Explainability Methods and Their Evaluation in AI

UofU Data Science via YouTube Direct link

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An Overview of Local Explainability Methods and Their Evaluation in AI

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  1. 1 Announcements
  2. 2 It's hard to opt-out
  3. 3 Confidence scores
  4. 4 Explanations in plain English free-text / chain-of-thoughts
  5. 5 Input attribution gradient-based & select-then-predict
  6. 6 Feature interactions effective attention
  7. 7 Concept-based explanations TCAV
  8. 8 Data influence influence functions
  9. 9 Contrastive explanations contrastive editing
  10. 10 Explainability as a dialog
  11. 11 Taxonomy of evaluation of explanations
  12. 12 Simulatability
  13. 13 Why are application-grounded evals of explanations scarce in NLP?
  14. 14 Application-grounded evaluations
  15. 15 Trust in AI

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