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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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Table of Contents (19) Chapters Close

Preface 1. Section 1: Algorithms and Environments FREE CHAPTER
2. The Landscape of Reinforcement Learning 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

Deep neural networks and Q-learning

The Q-learning algorithm, as we saw in Chapter 4, Q-Learning and SARSA Applications, has many qualities that enable its application in many real-world contexts. A key ingredient of this algorithm is that it makes use of the Bellman equation for learning the Q-function. The Bellman equation, as used by the Q-learning algorithm, enables the updating of Q-values from subsequent state-action values. This makes the algorithm able to learn at every step, without waiting until the trajectory is completed. Also, every state or action-state pair has its own values stored in a lookup table that saves and retrieves the corresponding values. Being designed in this way, Q-learning converges to optimal values as long as all the state-action pairs are repeatedly sampled. Furthermore, the method uses two policies: a non-greedy behavior policy to gather experience...

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