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Efficient online learning algorithms...
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Kong, Xiangyu.
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Efficient online learning algorithms for Total Least Square problems
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Efficient online learning algorithms for Total Least Square problems/ by Xiangyu Kong, Dazheng Feng.
作者:
Kong, Xiangyu.
其他作者:
Feng, Dazheng.
出版者:
Singapore :Springer Nature Singapore : : 2024.,
面頁冊數:
xxvii, 269 p. :ill. (some col.), digital ;24 cm.
內容註:
Introduction -- Least Square Problems -- Total Least Square Methods -- Fast Recursive TLS Algorithms -- Approximate Inverse Power Iteration TLS Algorithm -- Neural Based MCA Algorithms for Adaptive TLS -- Neural-Based SVD Algorithms -- Neural based TLS Algorithms -- TLS Algorithm Under Non-Gaussian Noises -- Performance Analysis Methods of TLS Algorithms.
Contained By:
Springer Nature eBook
標題:
Least squares. -
電子資源:
https://doi.org/10.1007/978-981-97-1765-1
ISBN:
9789819717651
Efficient online learning algorithms for Total Least Square problems
Kong, Xiangyu.
Efficient online learning algorithms for Total Least Square problems
[electronic resource] /by Xiangyu Kong, Dazheng Feng. - Singapore :Springer Nature Singapore :2024. - xxvii, 269 p. :ill. (some col.), digital ;24 cm. - Engineering applications of computational methods,v. 212662-3374 ;. - Engineering applications of computational methods ;v. 21..
Introduction -- Least Square Problems -- Total Least Square Methods -- Fast Recursive TLS Algorithms -- Approximate Inverse Power Iteration TLS Algorithm -- Neural Based MCA Algorithms for Adaptive TLS -- Neural-Based SVD Algorithms -- Neural based TLS Algorithms -- TLS Algorithm Under Non-Gaussian Noises -- Performance Analysis Methods of TLS Algorithms.
This book reports the developments of the Total Least Square (TLS) algorithms for parameter estimation and adaptive filtering. Specifically, it introduces the authors' latest achievements in the past 20 years, including the recursive TLS algorithms, the approximate inverse power iteration TLS algorithm, the neural based MCA algorithm, the neural based SVD algorithm, the neural based TLS algorithm, the TLS algorithms under non-Gaussian noises, performance analysis methods of TLS algorithms, etc. In order to faster the understanding and mastering of the new methods provided in this book for readers, before presenting each new method in each chapter, a specialized section is provided to review the closely related several basis models. Throughout the book, large of procedure of new methods are provided, and all new algorithms or methods proposed by us are tested and verified by numerical simulations or actual engineering applications. Readers will find illustrative demonstration examples on a range of industrial processes to study. Readers will find out the present deficiency and recent developments of the TLS parameter estimation fields, and learn from the the authors' latest achievements or new methods around the practical industrial needs. In my opinion, this book can be assimilated by advanced undergraduates and graduate students, as well as statisticians, because of the new tools in data analysis, applied mathematics experts, because of the novel theories and techniques that we propose, engineers, above all for the applications in control, system identification, computer vision, and signal processing.
ISBN: 9789819717651
Standard No.: 10.1007/978-981-97-1765-1doiSubjects--Topical Terms:
549973
Least squares.
LC Class. No.: TA347.L4
Dewey Class. No.: 620.00151
Efficient online learning algorithms for Total Least Square problems
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Introduction -- Least Square Problems -- Total Least Square Methods -- Fast Recursive TLS Algorithms -- Approximate Inverse Power Iteration TLS Algorithm -- Neural Based MCA Algorithms for Adaptive TLS -- Neural-Based SVD Algorithms -- Neural based TLS Algorithms -- TLS Algorithm Under Non-Gaussian Noises -- Performance Analysis Methods of TLS Algorithms.
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This book reports the developments of the Total Least Square (TLS) algorithms for parameter estimation and adaptive filtering. Specifically, it introduces the authors' latest achievements in the past 20 years, including the recursive TLS algorithms, the approximate inverse power iteration TLS algorithm, the neural based MCA algorithm, the neural based SVD algorithm, the neural based TLS algorithm, the TLS algorithms under non-Gaussian noises, performance analysis methods of TLS algorithms, etc. In order to faster the understanding and mastering of the new methods provided in this book for readers, before presenting each new method in each chapter, a specialized section is provided to review the closely related several basis models. Throughout the book, large of procedure of new methods are provided, and all new algorithms or methods proposed by us are tested and verified by numerical simulations or actual engineering applications. Readers will find illustrative demonstration examples on a range of industrial processes to study. Readers will find out the present deficiency and recent developments of the TLS parameter estimation fields, and learn from the the authors' latest achievements or new methods around the practical industrial needs. In my opinion, this book can be assimilated by advanced undergraduates and graduate students, as well as statisticians, because of the new tools in data analysis, applied mathematics experts, because of the novel theories and techniques that we propose, engineers, above all for the applications in control, system identification, computer vision, and signal processing.
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