Book Image

Hands-On Neuroevolution with Python

By : Iaroslav Omelianenko
Book Image

Hands-On Neuroevolution with Python

By: Iaroslav Omelianenko

Overview of this book

Neuroevolution is a form of artificial intelligence learning that uses evolutionary algorithms to simplify the process of solving complex tasks in domains such as games, robotics, and the simulation of natural processes. This book will give you comprehensive insights into essential neuroevolution concepts and equip you with the skills you need to apply neuroevolution-based algorithms to solve practical, real-world problems. You'll start with learning the key neuroevolution concepts and methods by writing code with Python. You'll also get hands-on experience with popular Python libraries and cover examples of classical reinforcement learning, path planning for autonomous agents, and developing agents to autonomously play Atari games. Next, you'll learn to solve common and not-so-common challenges in natural computing using neuroevolution-based algorithms. Later, you'll understand how to apply neuroevolution strategies to existing neural network designs to improve training and inference performance. Finally, you'll gain clear insights into the topology of neural networks and how neuroevolution allows you to develop complex networks, starting with simple ones. By the end of this book, you will not only have explored existing neuroevolution-based algorithms, but also have the skills you need to apply them in your research and work assignments.
Table of Contents (18 chapters)
Free Chapter
1
Section 1: Fundamentals of Evolutionary Computation Algorithms and Neuroevolution Methods
4
Section 2: Applying Neuroevolution Methods to Solve Classic Computer Science Problems
9
Section 3: Advanced Neuroevolution Methods
14
Section 4: Discussion and Concluding Remarks

Hypercube-Based NEAT for Visual Discrimination

In this chapter, you will learn about the main concepts behind a hypercube-based NEAT algorithm and about the main challenges it was designed to solve. We take a look at the problems that arise when attempting to use direct genome encoding with large-scale artificial neural networks (ANN) and how they can be solved with the introduction of an indirect genome encoding scheme. You will learn how a Compositional Pattern Producing Network (CPPN) can be used to store genome encoding information with an extra-high compression rate and how CPPNs are employed by the HyperNEAT algorithm. Finally, you will work with practical examples that demonstrate the power of the HyperNEAT algorithm.

In this chapter, we discuss the following topics:

  • The problem with the direct encoding of large-scale natural networks using NEAT, and how HyperNEAT can...