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Reinforcement Learning Algorithms with Python

You're reading from   Reinforcement Learning Algorithms with Python Learn, understand, and develop smart algorithms for addressing AI challenges

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Product type Paperback
Published in Oct 2019
Publisher Packt
ISBN-13 9781789131116
Length 366 pages
Edition 1st Edition
Languages
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Author (1):
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Andrea Lonza Andrea Lonza
Author Profile Icon Andrea Lonza
Andrea Lonza
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Toc

Table of Contents (19) Chapters Close

Preface 1. Section 1: Algorithms and Environments
2. The Landscape of Reinforcement Learning FREE CHAPTER 3. Implementing RL Cycle and OpenAI Gym 4. Solving Problems with Dynamic Programming 5. Section 2: Model-Free RL Algorithms
6. Q-Learning and SARSA Applications 7. Deep Q-Network 8. Learning Stochastic and PG Optimization 9. TRPO and PPO Implementation 10. DDPG and TD3 Applications 11. Section 3: Beyond Model-Free Algorithms and Improvements
12. Model-Based RL 13. Imitation Learning with the DAgger Algorithm 14. Understanding Black-Box Optimization Algorithms 15. Developing the ESBAS Algorithm 16. Practical Implementation for Resolving RL Challenges 17. Assessments
18. Other Books You May Enjoy

TD learning

Monte Carlo methods are a powerful way to learn directly by sampling from the environment, but they have a big drawback—they rely on the full trajectory. They have to wait until the end of the episode, and only then can they update the state values. Therefore, a crucial factor is knowing what happens when the trajectory has no end, or if it's very long. The answer is that it will produce terrifying results. A similar solution to this problem has already come up in DP algorithms, where the state values are updated at each step, without waiting until the end. Instead of using the complete return accumulated during the trajectory, it just uses the immediate reward and the estimate of the next state value. A visual example of this update is given in figure 4.2 and shows the parts involved in a single step of learning. This technique is called bootstrapping...

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