DocumentCode
3603793
Title
Analyzing Sparse Dictionaries for Online Learning With Kernels
Author
Honeine, Paul
Author_Institution
Inst. Charles Delaunay, Univ. de Technol. de Troyes, Troyes, France
Volume
63
Issue
23
fYear
2015
Firstpage
6343
Lastpage
6353
Abstract
Many signal processing and machine learning methods share essentially the same linear-in-the-parameter model, with as many parameters as available samples as in kernel-based machines. Sparse approximation is essential in many disciplines, with new challenges emerging in online learning with kernels. To this end, several sparsity measures have been proposed in the literature to quantify sparse dictionaries and constructing relevant ones, the most prolific ones being the distance, the approximation, the coherence and the Babel measures. In this paper, we analyze sparse dictionaries based on these measures. By conducting an eigenvalue analysis, we show that these sparsity measures share many properties, including the linear independence condition and inducing a well-posed optimization problem. Furthermore, we prove that there exists a quasi-isometry between the parameter (i.e., dual) space and the dictionary´s induced feature space.
Keywords
approximation theory; eigenvalues and eigenfunctions; learning (artificial intelligence); signal processing; Babel measure; eigenvalue analysis; kernel based-learning; linear independence condition; linear-in-the-parameter model; machine learning method; online learning; quasiisometry; signal processing; sparse approximation; sparse dictionary; Atomic measurements; Dictionaries; Kernel; Least squares approximations; Optimization; Signal processing algorithms; Adaptive filtering; Gram matrix; kernel-based methods; machine learning; pattern recognition; sparse approximation;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2015.2457396
Filename
7160759
Link To Document