Self-learning and adaptive algorithms for business applications : a guide to adaptive neuro-fuzzy systems for fuzzy clustering under uncertainty conditions

In today's data-driven world, more sophisticated algorithms for data processing are in high demand, mainly when the data cannot be handled with the help of traditional techniques. Self-learning and adaptive algorithms are now widely used by such leading giants that as Google, Tesla, Microsoft,...

Full description

Saved in:
Bibliographic Details
Main Authors Hu, Zhengbing (Author), Bodyanskiy, Yevgeniy V. (Author), Tyshchenko, Oleksii (Author)
Format Electronic eBook
LanguageEnglish
Published Bingley, U.K. : Emerald Publishing Limited, 2019.
SeriesEmerald points.
Subjects
Online AccessFull text
ISBN9781838671716
9781838671730
DOI10.1108/9781838671716
Physical Description1 online resource (vii, 111 pages) ; cm.

Cover

More Information
Summary:In today's data-driven world, more sophisticated algorithms for data processing are in high demand, mainly when the data cannot be handled with the help of traditional techniques. Self-learning and adaptive algorithms are now widely used by such leading giants that as Google, Tesla, Microsoft, and Facebook in their projects and applications.In this guide designed for researchers and students of computer science, readers will find a resource for how to apply methods that work on real-life problems to their challenging applications, and a go-to work that makes fuzzy clustering issues and aspects clear. Including research relevant to those studying cybernetics, applied mathematics, statistics, engineering, and bioinformatics who are working in the areas of machine learning, artificial intelligence, complex system modeling and analysis, neural networks, and optimization, this is an ideal read for anyone interested in learning more about the fascinating new developments in machine learning.
Bibliography:Includes bibliographical references.
ISBN:9781838671716
9781838671730
DOI:10.1108/9781838671716
Physical Description:1 online resource (vii, 111 pages) ; cm.