Towards Fast Autonomous Learners: Advances in Reinforcement Learning - 2015

Towards Fast Autonomous Learners: Advances in Reinforcement Learning - 2015

Center for Language & Speech Processing(CLSP), JHU via YouTube Direct link

Active Set is Models Compatible with Current Task's Data

15 of 16

15 of 16

Active Set is Models Compatible with Current Task's Data

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Towards Fast Autonomous Learners: Advances in Reinforcement Learning - 2015

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  1. 1 Intro
  2. 2 Markov Decision Process (MDP)
  3. 3 Reinforcement Learning
  4. 4 Unbiased Policy Evaluation for General RL in Short Horizons
  5. 5 Queue-based Offline Evaluation of Online Bandit Algorithms
  6. 6 Our Queue Approach Can Sometimes Evaluate Algorithms that Use Deterministic Policies for Many More Time Steps than Rejection
  7. 7 Sample Complexity of RL
  8. 8 Provably More Efficient Learners
  9. 9 Fast, Better Policy Search using Bayesian Optimization
  10. 10 Black Box Optimization
  11. 11 Opening the Box: Leverage Offline Policy Evaluation
  12. 12 Personalization & Transfer Learning for Sequential Decision Making Tasks
  13. 13 Latent Variable Modeling Background
  14. 14 Diameter Assumption: Needed for Sample Complexity Improvement in Transfer?
  15. 15 Active Set is Models Compatible with Current Task's Data
  16. 16 More Data Efficient Learning In Domains Where It Matters

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