This book provides an in-depth analysis of the current evolutionary clustering techniques. It discusses the most highly regarded methods for data clustering. The book provides literature reviews about single objective and multi-objective evolutionary clustering algorithms. In addition, the book provides a comprehensive review of the fitness functions and evaluation measures that are used in most of evolutionary clustering algorithms. Furthermore, it provides a conceptual analysis including definition, validation and quality measures, applications, and implementations for data clustering using classical and modern nature-inspired techniques. It features a range of proven and recent nature-inspired algorithms used to data clustering, including particle swarm optimization, ant colony optimization, grey wolf optimizer, salp swarm algorithm, multi-verse optimizer, Harris hawks optimization, beta-hill climbing optimization. The book also covers applications of evolutionary data clustering indiverse fields such as image segmentation, medical applications, and pavement infrastructure asset management.
Serija: | Algorithms for Intelligent Systems |
Leidėjas: | Springer Nature Singapore |
Išleidimo metai: | 2021 |
Knygos puslapių skaičius: | 260 |
ISBN-10: | 9813341904 |
ISBN-13: | 9789813341906 |
Formatas: | Knyga kietu viršeliu |
Kalba: | Anglų |
Žanras: | Expert systems / knowledge-based systems |
Parašykite atsiliepimą apie „Evolutionary Data Clustering: Algorithms and Applications“