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Mastering Reinforcement Learning with Python

You're reading from   Mastering Reinforcement Learning with Python Build next-generation, self-learning models using reinforcement learning techniques and best practices

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Product type Paperback
Published in Dec 2020
Publisher Packt
ISBN-13 9781838644147
Length 544 pages
Edition 1st Edition
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Author (1):
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Enes Bilgin Enes Bilgin
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Enes Bilgin
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Table of Contents (24) Chapters Close

Preface 1. Section 1: Reinforcement Learning Foundations
2. Chapter 1: Introduction to Reinforcement Learning FREE CHAPTER 3. Chapter 2: Multi-Armed Bandits 4. Chapter 3: Contextual Bandits 5. Chapter 4: Makings of a Markov Decision Process 6. Chapter 5: Solving the Reinforcement Learning Problem 7. Section 2: Deep Reinforcement Learning
8. Chapter 6: Deep Q-Learning at Scale 9. Chapter 7: Policy-Based Methods 10. Chapter 8: Model-Based Methods 11. Chapter 9: Multi-Agent Reinforcement Learning 12. Section 3: Advanced Topics in RL
13. Chapter 10: Introducing Machine Teaching 14. Chapter 11: Achieving Generalization and Overcoming Partial Observability 15. Chapter 12: Meta-Reinforcement Learning 16. Chapter 13: Exploring Advanced Topics 17. Section 4: Applications of RL
18. Chapter 14: Solving Robot Learning 19. Chapter 15: Supply Chain Management 20. Chapter 16: Personalization, Marketing, and Finance 21. Chapter 17: Smart City and Cybersecurity 22. Chapter 18: Challenges and Future Directions in Reinforcement Learning 23. Other Books You May Enjoy

Chapter 8: Model-Based Methods

All of the deep reinforcement learning (RL) algorithms we have covered so far were model-free, which means they did not assume any knowledge about the transition dynamics of the environment but learned from sampled experiences. In fact, this was a quite deliberate departure from the dynamic programming methods to save us from requiring a model of the environment. In this chapter, we swing the pendulum back a little bit and discuss a class of methods that rely on a model, called model-based methods. These methods can lead to improved sample efficiency by several orders of magnitude in some problems, making it a very appealing approach, especially when collecting experience is as costly as in robotics. Having said this, we still will not assume that we have such a model readily available, but we will discuss how to learn one. Once we have a model, it can be used for decision-time planning and improving the performance of model-free methods.

This important...

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