Książka Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines Jamal Amani Rad

Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines

Theory, Algorithms and Applications

Język: Angielski
Oprawa: Twarda
Wydawca: Springer, Berlin
Dostępność: Dostępna u dostawcy
Wysyłamy za 10-13 dni
597.43
This book contains select chapters on support vector algorithms from different perspectives, includi...

Informacje o książce

Język
Angielski
Oprawa
Książka - Twarda
Data wydania
2023
strony
312
EAN
9789811965524
Enbook ID
41382417
Waga
625
Wymiary
155 x 235

Pełny opis

This book contains select chapters on support vector algorithms from different perspectives, including mathematical background, properties of various kernel functions, and several applications. The main focus of this book is on orthogonal kernel functions, and the properties of the classical kernel functions-Chebyshev, Legendre, Gegenbauer, and Jacobi-are reviewed in some chapters. Moreover, the fractional form of these kernel functions is introduced in the same chapters, and for ease of use for these kernel functions, a tutorial on a Python package named ORSVM is presented. The book also exhibits a variety of applications for support vector algorithms, and in addition to the classification, these algorithms along with the introduced kernel functions are utilized for solving ordinary, partial, integro, and fractional differential equations.On the other hand, nowadays, the real-time and big data applications of support vector algorithms are growing. Consequently, the Compute Unified Device Architecture (CUDA) parallelizing procedure of support vector algorithms based on orthogonal kernel functions is presented. Finally, a brief tutorial on Python programming for data analysis and some preliminaries of linear algebra are presented in the appendices, and the readers who are not familiar with the basics of Python programming or linear algebra can refer to them. The book sheds light on how to use support vector algorithms based on orthogonal kernel functions in different situations and gives a significant perspective to all machine learning and scientific machine learning researchers all around the world to utilize fractional orthogonal kernel functions in their pattern recognition or scientific computing problems.

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