<span>This book, written by leading international researchers of evolutionary approaches to machine learning, explores various ways evolution can address machine learning problems and improve current methods of machine learning. Topics in this book are organized into five parts. The first part intro
Handbook of Evolutionary Machine Learning
β Scribed by Wolfgang Banzhaf; Penousal Machado; Mengjie Zhang
- Publisher
- Springer Nature Singapore
- Year
- 2023
- Tongue
- English
- Leaves
- 784
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book, written by leading international researchers of evolutionary approaches to machine learning, explores various ways evolution can address machine learning problems and improve current methods of machine learning. Topics in this book are organized into five parts. The first part introduces some fundamental concepts and overviews of evolutionary approaches to the three different classes of learning employed in machine learning. The second addresses the use of evolutionary computation as a machine learning technique describing methodologic improvements for evolutionary clustering, classification, regression, and ensemble learning. The third part explores the connection between evolution and neural networks, in particular the connection to deep learning, generative and adversarial models as well as the exciting potential of evolution with large language models. The fourth part focuses on the use of evolutionary computation for supporting machine learning methods. This includes methodological developments for evolutionary data preparation, model parametrization, design, and validation. The final part covers several chapters on applications in medicine, robotics, science, finance, and other disciplines. Readers find reviews of application areas and can discover large-scale, real-world applications of evolutionary machine learning to a variety of problem domains. This book will serve as an essential reference for researchers, postgraduate students, practitioners in industry and all those interested in evolutionary approaches to machine learning.
β¦ Table of Contents
Cover
Front Matter
Part I. Evolutionary Machine Learning Basics
1. Fundamentals of Evolutionary Machine Learning
2. Evolutionary Supervised Machine Learning
3. EML for Unsupervised Learning
4. Evolutionary Computation and the Reinforcement Learning Problem
Part II. Evolutionary Computation as Machine Learning
5. Evolutionary Regression and Modelling
6. Evolutionary Clustering and Community Detection
7. Evolutionary Classification
8. Evolutionary Ensemble Learning
Part III. Evolution and Neural Networks
9. Evolutionary Neural Network Architecture Search
10. Evolutionary Generative Models
11. Evolution Through Large Models
12. Hardware-Aware Evolutionary Approaches to Deep Neural Networks
13. Adversarial Evolutionary Learning with Distributed Spatial Coevolution
Part IV. Evolutionary Computation for Machine Learning
14. Genetic Programming as an Innovation Engine for Automated Machine Learning: The Tree-Based Pipeline Optimization Tool (TPOT)
15. Evolutionary Model ValidationβAn Adversarial Robustness Perspective
16. Evolutionary Approaches to Explainable Machine Learning
17. Evolutionary Algorithms for Fair Machine Learning
Part V. Applications of Evolutionary Machine Learning
18. Evolutionary Machine Learning in Science and Engineering
19. Evolutionary Machine Learning in Environmental Science
20. Evolutionary Machine Learning in Medicine
21. Evolutionary Machine Learning for Space
22. Evolutionary Machine Learning in Control
23. Evolutionary Machine Learning in Robotics
24. Evolutionary Machine Learning in Finance
25. Evolutionary Machine Learning and Games
26. Evolutionary Machine Learning in the Arts
Back Matter
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