Title :
Preimage Problem in Kernel-Based Machine Learning
Author :
Honeine, Paul ; Richard, Cédric
Author_Institution :
Inst. Charles Delaunay, Univ. of Technol. of Troyes, Troyes, France
fDate :
3/1/2011 12:00:00 AM
Abstract :
While the nonlinear mapping from the input space to the feature space is central in kernel methods, the reverse mapping from the feature space back to the input space is also of primary interest. This is the case in many applications, including kernel principal component analysis (PCA) for signal and image denoising. Unfortunately, it turns out that the reverse mapping generally does not exist and only a few elements in the feature space have a valid preimage in the input space. The preimage problem consists of finding an approximate solution by identifying data in the input space based on their corresponding features in the high dimensional feature space. It is essentially a dimensionality-reduction problem, and both have been intimately connected in their historical evolution, as studied in this article.
Keywords :
learning (artificial intelligence); principal component analysis; dimensionality-reduction problem; kernel methods; kernel-based machine learning; nonlinear mapping; preimage problem; principal component analysis; reverse mapping; Classification algorithms; Kernel; Machine learning; Noise reduction; Optimization; Principal component analysis; Signal processing algorithms;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2010.939747