
Machine Learning with Noisy Labels
Definitions, Theory, Techniques and Solutions
Gustavo Carneiro(Author)
Academic Press
Published on 18. March 2024
Book
Paperback/Softback
312 pages
978-0-443-15441-6 (ISBN)
Description
Machine Learning and Noisy Labels: Definitions, Theory, Techniques and Solutions provides an ideal introduction to machine learning with noisy labels that is suitable for senior undergraduates, post graduate students, researchers and practitioners using, and researching, machine learning methods. Most of the modern machine learning models based on deep learning techniques depend on carefully curated and cleanly labeled training sets to be reliably trained and deployed. However, the expensive labeling process involved in the acquisition of such training sets limits the number and size of datasets available to build new models, slowing down progress in the field. This book defines the different types of label noise, introduces the theory behind the problem, presents the main techniques that enable the effective use of noisy-label training sets, and explains the most accurate methods.
More details
Language
English
Place of publication
San Diego
United States
Publishing group
Elsevier Science Publishing Co Inc
Target group
Professional and scholarly
Product notice
Paperback (trade)
Unsewn / adhesive bound
Dimensions
Height: 189 mm
Width: 234 mm
Thickness: 19 mm
Weight
650 gr
ISBN-13
978-0-443-15441-6 (9780443154416)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

E-Book
02/2024
Academic Press
€95.95
Available for download
Person
Professor Gustavo Carneiro, Artificial Intelligence and Machine Learning, University of Surrey, UK.
Author
Professor of AI and Machine Learning, Centre for Vision, Speech and Signal Processing (CVSSP), Surrey Institute for People-centred Artificial Intelligence, Department of Electrical and Electronic Engineering, The University of Surrey, UK
Content
1. Problem Definition
2. Noisy-label Problems and Datasets
3. Theoretical Aspects of Noisy-label Learning
4. Noisy-Label Learning Techniques
5. Benchmarks, Methods, Results and Code
6. Conclusion and Final Considerations
2. Noisy-label Problems and Datasets
3. Theoretical Aspects of Noisy-label Learning
4. Noisy-Label Learning Techniques
5. Benchmarks, Methods, Results and Code
6. Conclusion and Final Considerations