
Dealing with Imbalanced and Weakly Labelled Data in Machine Learning using Fuzzy and Rough Set Methods
Sarah Vluymans(Author)
Springer (Publisher)
Published on 5. December 2018
Book
Hardback
XVIII, 249 pages
978-3-030-04662-0 (ISBN)
Description
This book presents novel classification algorithms for four challenging prediction tasks, namely learning from imbalanced, semi-supervised, multi-instance and multi-label data. The methods are based on fuzzy rough set theory, a mathematical framework used to model uncertainty in data. The book makes two main contributions: helping readers gain a deeper understanding of the underlying mathematical theory; and developing new, intuitive and well-performing classification approaches. The authors bridge the gap between the theoretical proposals of the mathematical model and important challenges in machine learning. The intended readership of this book includes anyone interested in learning more about fuzzy rough set theory and how to use it in practical machine learning contexts. Although the core audience chiefly consists of mathematicians, computer scientists and engineers, the content will also be interesting and accessible to students and professionals from a range of other fields.
More details
Series
Edition
2019 ed.
Language
English
Place of publication
Cham
Switzerland
Publishing group
Springer International Publishing
Target group
Professional and scholarly
Illustrations
13 s/w Abbildungen, 10 farbige Abbildungen
XVIII, 249 p. 23 illus., 10 illus. in color.
Dimensions
Height: 241 mm
Width: 160 mm
Thickness: 21 mm
Weight
571 gr
ISBN-13
978-3-030-04662-0 (9783030046620)
DOI
10.1007/978-3-030-04663-7
Schweitzer Classification
Other editions
Additional editions

Sarah Vluymans
Dealing with Imbalanced and Weakly Labelled Data in Machine Learning using Fuzzy and Rough Set Methods
E-Book
11/2018
Springer
€96.29
Available for download
Content
Introduction.- Classi?cation.- Understanding OWA based fuzzy rough sets.- Fuzzy rough set based classi?cation of semi-supervised data.- Multi-instance learning.- Multi-label learning.- Conclusions and future work.- Bibliography.