Steps Toward Robust Artificial Intelligence - Thomas G Dietterich, Oregon State University

Steps Toward Robust Artificial Intelligence - Thomas G Dietterich, Oregon State University

Alan Turing Institute via YouTube Direct link

Robustness to Downside Risk

12 of 26

12 of 26

Robustness to Downside Risk

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Steps Toward Robust Artificial Intelligence - Thomas G Dietterich, Oregon State University

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  1. 1 Intro
  2. 2 STEPS TOWARD ROBUST ARTIFICIAL INTELLIGENCE
  3. 3 Marvin Minsky (1927-2016)
  4. 4 Minsky: Difference between Computer Programs and People
  5. 5 Outline
  6. 6 Self-Driving Cars
  7. 7 Automated Surgical Assistants
  8. 8 Autonomous Weapons
  9. 9 Conclusion
  10. 10 Robustness Lessons from Biology
  11. 11 Decision Making under Uncertainty
  12. 12 Robustness to Downside Risk
  13. 13 Robust Optimization • Many Al reasoning problems can be formulated as optimization problems
  14. 14 Impose a Budget on the Adversary
  15. 15 Detect Surprises
  16. 16 Monitor Auxiliary Regularities
  17. 17 Monitor Auxiliary Tasks
  18. 18 Open Category Object Recognition
  19. 19 Prediction with Anomaly Detection
  20. 20 Theoretical Guarantee
  21. 21 Related Efforts
  22. 22 Use a Bigger Model The risk of Unknown Unknowns may be reduced if we model more aspects of the world • Knowledge Base Construction Information Extraction & Knowledge Base Population
  23. 23 Use Causal Models
  24. 24 Employ a Portfolio of Models
  25. 25 Portfolio Methods in SAT & CSP
  26. 26 Summary

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