Article

Divergence-based vector quantization.

Department of Mathematics, Natural and Computer Sciences, University of Applied Sciences Mittweida, 09648 Mittweida, Germany.
Neural Computation (impact factor: 1.88). 02/2011; 23(5):1343-92. DOI:10.1162/NECO_a_00110
Source: PubMed

ABSTRACT Supervised and unsupervised vector quantization methods for classification and clustering traditionally use dissimilarities, frequently taken as Euclidean distances. In this article, we investigate the applicability of divergences instead, focusing on online learning. We deduce the mathematical fundamentals for its utilization in gradient-based online vector quantization algorithms. It bears on the generalized derivatives of the divergences known as Fréchet derivatives in functional analysis, which reduces in finite-dimensional problems to partial derivatives in a natural way. We demonstrate the application of this methodology for widely applied supervised and unsupervised online vector quantization schemes, including self-organizing maps, neural gas, and learning vector quantization. Additionally, principles for hyperparameter optimization and relevance learning for parameterized divergences in the case of supervised vector quantization are given to achieve improved classification accuracy.

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Keywords

divergences
 
finite-dimensional problems
 
Fréchet derivatives
 
functional analysis
 
generalized derivatives
 
gradient-based online vector quantization algorithms
 
mathematical fundamentals
 
natural way
 
neural gas
 
online
 
parameterized divergences
 
partial derivatives
 
unsupervised online vector quantization schemes
 
unsupervised vector quantization methods
 
utilization
 
vector quantization