Treffer: The periodic Sinc kernel: Theoretical design and applications in machine learning and scientific computing.

Title:
The periodic Sinc kernel: Theoretical design and applications in machine learning and scientific computing.
Authors:
Afzal Aghaei, Alireza1 (AUTHOR) alirezaafzalaghaei@gmail.com
Source:
Applied Soft Computing. Jun2025, Vol. 177, pN.PAG-N.PAG. 1p.
Database:
Supplemental Index

Weitere Informationen

This paper proposes the data-dependent Sinc kernel function specifically designed for kernel-based machine learning tasks involving oscillatory and periodic data. Mercer's theorem is proven for the proposed kernel, and its derivatives are explicitly computed. Notably, it is demonstrated that these derivatives form real symmetric positive definite Toeplitz matrices. To evaluate the effectiveness of the proposed kernel in machine learning and scientific applications, comprehensive assessments are conducted on a range of real-world and benchmark datasets, covering both periodic and non-periodic regression and classification tasks. Furthermore, the accuracy of the proposed kernel is validated through simulations involving different configurations of fractional Helmholtz, time-fractional sub-diffusion, and time-fractional Korteweg–de Vries differential equations on an unbounded domain. The results indicate that the proposed method outperforms existing periodic kernels, including Fourier and Wavelet kernels, in terms of accuracy. To facilitate the practical implementation and adoption of these findings, an open-source Python package named sinc is introduced at the end of this paper. • Introducing a novel Sinc-based periodic kernel for uncovering dataset oscillations. • Discussing kernel properties, including derivatives and hyperparameter analysis. • Evaluating kernel accuracy and speed on 20 machine learning benchmark datasets. • Analyzing applications of proposed Sinc kernel in physics-informed machine learning. • Proposing a Python package for machine learning and scientific machine learning tasks. [ABSTRACT FROM AUTHOR]