Online Learning in Markov Decision Processes - Part 2

Online Learning in Markov Decision Processes - Part 2

Simons Institute via YouTube Direct link

PERFORMANCE MEASURE: RE

4 of 27

4 of 27

PERFORMANCE MEASURE: RE

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Online Learning in Markov Decision Processes - Part 2

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 MARKOV DECISION PROCESSES
  3. 3 ADVERSARIAL
  4. 4 PERFORMANCE MEASURE: RE
  5. 5 OUTLINE
  6. 6 NON-OBLIVIOUS ADVERSARI
  7. 7 WHAT WENT WRONG?
  8. 8 OBLIVIOUS ADVERSARIES
  9. 9 LEARNING WITH CHANGING TRANSITIONS IS HARD
  10. 10 PROOF CONSTRUCTION
  11. 11 SLOWLY CHANGING MDPS
  12. 12 FORMAL PROTOCOL Online learning in a fixed MDP For each round t = 1,2, ..., • Learner observes state X, EX
  13. 13 TEMPORAL DEPENDENCES
  14. 14 REGRET DECOMPOSITION
  15. 15 THE DRIFT TERMS
  16. 16 LOCAL-TO-GLOBAL
  17. 17 THE MDP-EXPERT ALGORITHE
  18. 18 GUARANTEES FOR MDP-E
  19. 19 BANDIT FEEDBACK
  20. 20 ONLINE LINEAR OPTIMIZATIO
  21. 21 ONLINE MIRROR DESCENT
  22. 22 THE ONLINE REPS ALGORITH O-REPS
  23. 23 GUARANTEES FOR O-REPS
  24. 24 COMPARISON OF GUARANTE
  25. 25 MDP-E WITH FUNCTION APPROXIMATION MDP-E only needs a good approximation of the action-value
  26. 26 O-REPS WITH UNCERTAIN MO
  27. 27 OUTLOOK

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.