Mathematical Foundations of Nature-Inspired Algorithms Mathematical Foundations of Nature-Inspired Algorithms
SpringerBriefs in Optimization

Mathematical Foundations of Nature-Inspired Algorithms

    • $69.99
    • $69.99

Publisher Description

This book presents a systematic approach to analyze nature-inspired algorithms. Beginning with an introduction to optimization methods and algorithms, this book moves on to provide a unified framework of mathematical analysis for convergence and stability. Specific nature-inspired algorithms include: swarm intelligence, ant colony optimization, particle swarm optimization, bee-inspired algorithms, bat algorithm, firefly algorithm, and cuckoo search. Algorithms are analyzed from a wide spectrum of theories and frameworks to offer insight to the main characteristics of algorithms and understand how and why they work for solving optimization problems. In-depth mathematical analyses are carried out for different perspectives, including complexity theory, fixed point theory, dynamical systems, self-organization, Bayesian framework, Markov chain framework, filter theory, statistical learning, and statistical measures. Students and researchers in optimization, operations research, artificial intelligence, data mining, machine learning, computer science, and management sciences will see the pros and cons of a variety of algorithms through detailed examples and a comparison of algorithms.

GENRE
Science & Nature
RELEASED
2019
8 May
LANGUAGE
EN
English
LENGTH
118
Pages
PUBLISHER
Springer International Publishing
SELLER
Springer Nature B.V.
SIZE
2.7
MB

More Books Like This

Optimization Techniques and Applications with Examples Optimization Techniques and Applications with Examples
2018
Computational Intelligence in Expensive Optimization Problems Computational Intelligence in Expensive Optimization Problems
2010
Adaptive Differential Evolution Adaptive Differential Evolution
2009
Decision Making: Uncertainty, Imperfection, Deliberation and Scalability Decision Making: Uncertainty, Imperfection, Deliberation and Scalability
2007
Evolutionary Based Solutions for Green Computing Evolutionary Based Solutions for Green Computing
2011
Issues in the Use of Neural Networks in Information Retrieval Issues in the Use of Neural Networks in Information Retrieval
2009

More Books by Xin-She Yang & Xing-Shi He

Engineering Mathematics with Examples and Applications (Enhanced Edition) Engineering Mathematics with Examples and Applications (Enhanced Edition)
2016
Evolution in Computational Intelligence Evolution in Computational Intelligence
2023
Engineering Simulation and its Applications (Enhanced Edition) Engineering Simulation and its Applications (Enhanced Edition)
2024
Proceedings of Eighth International Congress on Information and Communication Technology Proceedings of Eighth International Congress on Information and Communication Technology
2023
Proceedings of Eighth International Congress on Information and Communication Technology Proceedings of Eighth International Congress on Information and Communication Technology
2023
Benchmarks and Hybrid Algorithms in Optimization and Applications Benchmarks and Hybrid Algorithms in Optimization and Applications
2023

Other Books in This Series

Derivative-free DIRECT-type Global Optimization Derivative-free DIRECT-type Global Optimization
2023
Optimization in Banach Spaces Optimization in Banach Spaces
2022
The Krasnosel'skiĭ-Mann Iterative Method The Krasnosel'skiĭ-Mann Iterative Method
2022
A Derivative-free Two Level Random Search Method for Unconstrained Optimization A Derivative-free Two Level Random Search Method for Unconstrained Optimization
2021
Algorithm Portfolios Algorithm Portfolios
2021
Bayesian and High-Dimensional Global Optimization Bayesian and High-Dimensional Global Optimization
2021