Vai al contenuto principale della pagina

Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines [[electronic resource] ] : Theory, Algorithms and Applications / / edited by Jamal Amani Rad, Kourosh Parand, Snehashish Chakraverty



(Visualizza in formato marc)    (Visualizza in BIBFRAME)

Titolo: Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines [[electronic resource] ] : Theory, Algorithms and Applications / / edited by Jamal Amani Rad, Kourosh Parand, Snehashish Chakraverty Visualizza cluster
Pubblicazione: Singapore : , : Springer Nature Singapore : , : Imprint : Springer, , 2023
Edizione: 1st ed. 2023.
Descrizione fisica: 1 online resource (XIV, 305 p. 83 illus., 58 illus. in color.)
Disciplina: 512.3
Soggetto topico: Algebraic fields
Polynomials
Mathematical optimization
Quantitative research
Machine learning
Pattern recognition systems
Python (Computer program language)
Field Theory and Polynomials
Optimization
Data Analysis and Big Data
Machine Learning
Automated Pattern Recognition
Python
Aprenentatge automàtic
Algorismes
Funcions de Kernel
Python (Llenguatge de programació)
Soggetto genere / forma: Llibres electrònics
Persona (resp. second.): RadJamal Amani
ParandKourosh
ChakravertySnehashish
Nota di contenuto: Introduction to SVM -- Basics of SVM Method and Least Squares SVM -- Fractional Chebyshev Kernel Functions: Theory and Application -- Fractional Legendre Kernel Functions: Theory and Application -- Fractional Gegenbauer Kernel Functions: Theory and Application -- Fractional Jacobi Kernel Functions: Theory and Application -- Solving Ordinary Differential Equations by LS-SVM -- Solving Partial Differential Equations by LS-SVM -- Solving Integral Equations by LS-SVR -- Solving Distributed-Order Fractional Equations by LS-SVR -- GPU Acceleration of LS-SVM, Based on Fractional Orthogonal Functions -- Classification Using Orthogonal Kernel Functions: Tutorial on ORSVM Package.
Sommario/riassunto: 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 the procedure of support vector algorithms based on orthogonal kernel functions is presented. 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.
Titolo autorizzato: Learning with Fractional Orthogonal Kernel Classifiers in Support Vector Machines  Visualizza cluster
ISBN: 981-19-6553-6
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910682554503321
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Serie: Industrial and Applied Mathematics, . 2364-6845