Decision Awareness in Reinforcement Learning - End-to-End Optimization Approaches

Decision Awareness in Reinforcement Learning - End-to-End Optimization Approaches

GERAD Research Center via YouTube Direct link

Definition

2 of 25

2 of 25

Definition

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Decision Awareness in Reinforcement Learning - End-to-End Optimization Approaches

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

  1. 1 Intro
  2. 2 Definition
  3. 3 End-to-End Principle
  4. 4 What is neural network?
  5. 5 Automatic Differentiation
  6. 6 Computational Graph
  7. 7 Reverse and Forward Mode
  8. 8 Control-Oriented Model-Based Reinforcement Learning with Implicit Differentiation
  9. 9 Optimal Model Design Problem (OMD)
  10. 10 Smooth Bellman Optimality Equations
  11. 11 Connection between OMD and Rust (1988)
  12. 12 Bilevel Optimization (Bard 1998)
  13. 13 Implicit and Iterative Differentiation
  14. 14 Benefits under Model Misspecification
  15. 15 Function Approximation and Distractor States
  16. 16 Performance under Model Misspecification
  17. 17 Continuous-Time Meta-Learning with Forward Mode Dif- ferentiation.
  18. 18 Gradient Flow-based Meta-Learning
  19. 19 Time irreversibility
  20. 20 Memory-efficient meta-gradients
  21. 21 Consequence
  22. 22 Empirical Efficiency of COML
  23. 23 Nonlinear Trajectory Optimization
  24. 24 Extragradient Method
  25. 25 Trajectory Optimization with Learned Model

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.