Classes of kernels for machine learning: a statistics perspective
North Carolina State University
Abstract
In this paper, we present classes of kernels for machine learning from a statistics perspective. Indeed, kernels are positive definite functions and thus also covariances. After discussing key properties of kernels, as well as a new formula to construct kernels, we present several important classes of kernels: anisotropic stationary kernels, isotropic stationary kernels, compactly supportedkernels, locally stationary kernels, nonstationary kernels, andseparable nonstationary kernels. Compactly supportedkernels andseparable nonstationary kernels are of prime interest because they provide a computational reduction for kernelbased methods. We describe the spectral representation of the various classes of kernels…
Citation impact
- FWCI
- 16.63
- Percentile
- 100%
- References
- 39
Authors
1Topics & keywords
- Kernel (algebra)
- Mathematics
- Perspective (graphical)
- Separable space
- Prime (order theory)
- Kernel method
- Isotropy
- Representation (politics)