Lie Group Machine Learning / / Fanzhang Li, Li Zhang, Zhao Zhang.

This book explains deep learning concepts and derives semi-supervised learning and nuclear learning frameworks based on cognition mechanism and Lie group theory. Lie group machine learning is a theoretical basis for brain intelligence, Neuromorphic learning (NL), advanced machine learning, and advan...

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Superior document:Title is part of eBook package: De Gruyter DG Plus eBook-Package 2019
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Place / Publishing House:Berlin ;, Boston : : De Gruyter, , [2018]
©2019
Year of Publication:2018
Language:English
Online Access:
Physical Description:1 online resource (XVI, 517 p.)
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Other title:Frontmatter --
Preface --
Contents --
1. Lie group machine learning model --
2. Lie group subspace orbit generation learning --
3. Symplectic group learning --
4. Quantum group learning --
5. Lie group fibre bundle learning --
6. Lie group covering learning --
7. Lie group deep structure learning --
8. Lie group semi–supervised learning --
9. Lie group kernel learning --
10. Tensor learning --
11. Frame bundle connection learning --
12. Spectral estimation learning --
13. Finsler geometric learning --
14. Homology boundary learning --
15. Category representation learning --
16. Neuromorphic synergy learning --
17. Appendix --
Authors --
Index
Summary:This book explains deep learning concepts and derives semi-supervised learning and nuclear learning frameworks based on cognition mechanism and Lie group theory. Lie group machine learning is a theoretical basis for brain intelligence, Neuromorphic learning (NL), advanced machine learning, and advanced artifi cial intelligence. The book further discusses algorithms and applications in tensor learning, spectrum estimation learning, Finsler geometry learning, Homology boundary learning, and prototype theory. With abundant case studies, 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, artifi cial intelligence, machine learning, automation, mathematics, management science, cognitive science, financial management, and data analysis. In addition, this text can be used as the basis for teaching the principles of machine learning. Li Fanzhang is professor at the Soochow University, China. He is director of network security engineering laboratory in Jiangsu Province and is also the director of the Soochow Institute of industrial large data. He published more than 200 papers, 7 academic monographs, and 4 textbooks. Zhang Li is professor at the School of Computer Science and Technology of the Soochow University. She published more than 100 papers in journals and conferences, and holds 23 patents. Zhang Zhao is currently an associate professor at the School of Computer Science and Technology of the Soochow University. He has authored and co-authored more than 60 technical papers.
Format:Mode of access: Internet via World Wide Web.
ISBN:9783110499506
9783110719567
9783110616859
9783110604252
9783110603255
9783110603118
DOI:10.1515/9783110499506
Access:restricted access
Hierarchical level:Monograph
Statement of Responsibility: Fanzhang Li, Li Zhang, Zhao Zhang.