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Dynamic Fuzzy Machine Learning / Fanzhang Li, Li Zhang, Zhao Zhang.

By: Li, Fanzhang [author.].
Contributor(s): Fanzhang, Li [contributor.] | Zhang, Li [author.] | Zhang, Zhao [author.].
Material type: materialTypeLabelBookPublisher: Berlin ; Boston : De Gruyter, [2017]Copyright date: ©2018Description: 1 online resource (XIV, 323 p.).Content type: text Media type: computer Carrier type: online resourceISBN: 9783110520651.Subject(s): Fuzzy logic | Machine learning | COMPUTERS / Intelligence (AI) & SemanticsAdditional physical formats: No title; No titleDDC classification: 006.31 Other classification: ST 330 Online resources: Click here to access online | Click here to access online | Cover
Contents:
Frontmatter -- Preface -- Contents -- 1. Dynamic fuzzy machine learning model -- 2. Dynamic fuzzy autonomic learning subspace algorithm -- 3. Dynamic fuzzy decision tree learning -- 4. Concept learning based on dynamic fuzzy sets -- 5. Semi-supervised multi-task learning based on dynamic fuzzy sets -- 6. Dynamic fuzzy hierarchical relationships -- 7. Multi-agent learning model based on dynamic fuzzy logic -- 8. Appendix -- Index
Title is part of eBook package:DG Plus eBook-Package 2018Title is part of eBook package:EBOOK PACKAGE COMPLETE 2017Title is part of eBook package:EBOOK PACKAGE COMPLETE ENGLISH 2017Title is part of eBook package:EBOOK PACKAGE Engineering, Computer Sciences 2017Summary: Machine learning is widely used for data analysis. Dynamic fuzzy data are one of the most difficult types of data to analyse in the field of big data, cloud computing, the Internet of Things, and quantum information. At present, the processing of this kind of data is not very mature. The authors carried out more than 20 years of research, and show in this book their most important results. The seven chapters of the book are devoted to key topics such as dynamic fuzzy machine learning models, dynamic fuzzy self-learning subspace algorithms, fuzzy decision tree learning, dynamic concepts based on dynamic fuzzy sets, semi-supervised multi-task learning based on dynamic fuzzy data, dynamic fuzzy hierarchy learning, examination of multi-agent learning model based on dynamic fuzzy logic. This book can be used as a reference book for senior college students and graduate students as well as college teachers and scientific and technical personnel involved in computer science, artificial intelligence, machine learning, automation, data analysis, mathematics, management, cognitive science, and finance. It can be also used as the basis for teaching the principles of dynamic fuzzy learning.
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Frontmatter -- Preface -- Contents -- 1. Dynamic fuzzy machine learning model -- 2. Dynamic fuzzy autonomic learning subspace algorithm -- 3. Dynamic fuzzy decision tree learning -- 4. Concept learning based on dynamic fuzzy sets -- 5. Semi-supervised multi-task learning based on dynamic fuzzy sets -- 6. Dynamic fuzzy hierarchical relationships -- 7. Multi-agent learning model based on dynamic fuzzy logic -- 8. Appendix -- Index

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Machine learning is widely used for data analysis. Dynamic fuzzy data are one of the most difficult types of data to analyse in the field of big data, cloud computing, the Internet of Things, and quantum information. At present, the processing of this kind of data is not very mature. The authors carried out more than 20 years of research, and show in this book their most important results. The seven chapters of the book are devoted to key topics such as dynamic fuzzy machine learning models, dynamic fuzzy self-learning subspace algorithms, fuzzy decision tree learning, dynamic concepts based on dynamic fuzzy sets, semi-supervised multi-task learning based on dynamic fuzzy data, dynamic fuzzy hierarchy learning, examination of multi-agent learning model based on dynamic fuzzy logic. This book can be used as a reference book for senior college students and graduate students as well as college teachers and scientific and technical personnel involved in computer science, artificial intelligence, machine learning, automation, data analysis, mathematics, management, cognitive science, and finance. It can be also used as the basis for teaching the principles of dynamic fuzzy learning.

Mode of access: Internet via World Wide Web.

In English.

Description based on online resource; title from PDF title page (publisher's Web site, viewed 30. Aug 2021)

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