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Hands-On Neuroevolution with Python

You're reading from   Hands-On Neuroevolution with Python Build high-performing artificial neural network architectures using neuroevolution-based algorithms

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Product type Paperback
Published in Dec 2019
Publisher Packt
ISBN-13 9781838824914
Length 368 pages
Edition 1st Edition
Languages
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Author (1):
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Iaroslav Omelianenko Iaroslav Omelianenko
Author Profile Icon Iaroslav Omelianenko
Iaroslav Omelianenko
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Table of Contents (18) Chapters Close

Preface 1. Section 1: Fundamentals of Evolutionary Computation Algorithms and Neuroevolution Methods FREE CHAPTER
2. Overview of Neuroevolution Methods 3. Python Libraries and Environment Setup 4. Section 2: Applying Neuroevolution Methods to Solve Classic Computer Science Problems
5. Using NEAT for XOR Solver Optimization 6. Pole-Balancing Experiments 7. Autonomous Maze Navigation 8. Novelty Search Optimization Method 9. Section 3: Advanced Neuroevolution Methods
10. Hypercube-Based NEAT for Visual Discrimination 11. ES-HyperNEAT and the Retina Problem 12. Co-Evolution and the SAFE Method 13. Deep Neuroevolution 14. Section 4: Discussion and Concluding Remarks
15. Best Practices, Tips, and Tricks 16. Concluding Remarks 17. Other Books You May Enjoy

Summary

In this chapter, we discussed how neuroevolution can be used to train large ANNs with more than 4 million trainable parameters. You learned how to apply this learning method to create successful agents that are able to play classic Atari games by learning the game rules solely from observing the game screens. By completing the Atari game-playing experiment that was described in this chapter, you have learned about CNNs and how they can be used to map high-dimensional inputs, such as game screen observations, into the appropriate game actions. You now have a solid understanding of how CNNs can be used for value-function approximations in the deep RL method, which is guided by the deep neuroevolution algorithm.

With the knowledge that you've acquired from this chapter, you will be able to apply deep neuroevolution methods in domains with high-dimensional input data...

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