Nonlinear Component Analysis as a Kernel Eigenvalue Problem
Neural Computation1998Vol. 10(5), pp. 1299–1319
Citations Over TimeTop 1% of 1998 papers
Abstract
A new method for performing a nonlinear form of principal component analysis is proposed. By the use of integral operator kernel functions, one can efficiently compute principal components in high-dimensional feature spaces, related to input space by some nonlinear map—for instance, the space of all possible five-pixel products in 16 × 16 images. We give the derivation of the method and present experimental results on polynomial feature extraction for pattern recognition.
Related Papers
- → Nonlinear Projection Trick in Kernel Methods: An Alternative to the Kernel Trick(2013)56 cited
- → Nonlinear process monitoring using improved kernel principal component analysis(2016)3 cited
- Improving Performance of Kernel Principal Component Analysis Using Combination Kernel Functions(2004)
- → Kernel PCA Part 1: Polynomials without the Kernels(2015)1 cited
- Based on kernel principal component analysis combined kernel function algorithm(2012)