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The Reinforcement Learning Workshop

You're reading from  The Reinforcement Learning Workshop

Product type Book
Published in Aug 2020
Publisher Packt
ISBN-13 9781800200456
Pages 822 pages
Edition 1st Edition
Languages
Authors (9):
Alessandro Palmas Alessandro Palmas
Profile icon Alessandro Palmas
Emanuele Ghelfi Emanuele Ghelfi
Profile icon Emanuele Ghelfi
Dr. Alexandra Galina Petre Dr. Alexandra Galina Petre
Profile icon Dr. Alexandra Galina Petre
Mayur Kulkarni Mayur Kulkarni
Profile icon Mayur Kulkarni
Anand N.S. Anand N.S.
Profile icon Anand N.S.
Quan Nguyen Quan Nguyen
Profile icon Quan Nguyen
Aritra Sen Aritra Sen
Profile icon Aritra Sen
Anthony So Anthony So
Profile icon Anthony So
Saikat Basak Saikat Basak
Profile icon Saikat Basak
View More author details
Toc

Table of Contents (14) Chapters close

Preface
1. Introduction to Reinforcement Learning 2. Markov Decision Processes and Bellman Equations 3. Deep Learning in Practice with TensorFlow 2 4. Getting Started with OpenAI and TensorFlow for Reinforcement Learning 5. Dynamic Programming 6. Monte Carlo Methods 7. Temporal Difference Learning 8. The Multi-Armed Bandit Problem 9. What Is Deep Q-Learning? 10. Playing an Atari Game with Deep Recurrent Q-Networks 11. Policy-Based Methods for Reinforcement Learning 12. Evolutionary Strategies for RL Appendix

Importance Sampling

Monte Carlo methods can be on-policy or off-policy. In on-policy learning, we learn from the agent experience of the following policy. In off-policy learning, we learn how to estimate a target policy from the experience of following a different behavioral policy. Importance sampling is a key technique for off-policy learning. The following figure compares on-policy and off-policy learning:

Figure 6.7: On-Policy versus Off-Policy comparison

You might think that on-policy learning is learning while playing, while off-policy learning is learning by watching someone else play. You could improve your cricket game by playing cricket yourself. This will help you learn from your mistakes and best actions. That would be on-policy learning. You could also learn by watching others play the game of cricket and learning from their mistakes and best actions. That would be off-policy learning.

Human beings typically do both on-policy and off-policy...

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