We discuss the use of divergences in dissimilarity-based classification. Divergences can be employed whenever vectorial data consists of non-negative, potentially normalized features. This is, for instance, the case in spectral data or histograms. In particular, we introduce and study divergence based learning vector quantization (DLVQ). We derive cost function based DLVQ schemes for the family of gamma-divergences which includes the well-known Kullback-Leibler divergence and the so-called Cauchy-Schwarz divergence as special cases. The corresponding training schemes are applied to two different real world data sets. The first one, a benchmark data set (Wisconsin Breast Cancer) is available in the public domain. In the second problem, color...
The similarity of feature representations plays a pivotal role in the success of problems related to...
Prototype-based classification, identifying representatives of the data and suitable measures of dis...
We consider in this article median variants of the learning vector quantization classi-fier for clas...
We discuss the use of divergences in dissimilarity-based classification. Divergences can be employed...
Mwebaze E, Schneider P, Schleif F-M, et al. Divergence based classification in Learning Vector Quant...
Mwebaze E, Schneider P, Schleif F-M, Haase S, Villmann T, Biehl M. Divergence based Learning Vector ...
We propose the utilization of divergences in gradient descent learning of supervised and unsupervise...
Villmann T, Haase S, Schleif F-M, Hammer B. Divergence Based Online Learning in Vector Quantization....
Functional Bregman divergences are an important class of divergences in machine learning that genera...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
Nebel D, Hammer B, Frohberg K, Villmann T. Median variants of learning vector quantization for learn...
Dit proefschrift geeft een systematische analyse van op divergentie gebaseerde leer algoritmen en le...
abstract: Divergence functions are both highly useful and fundamental to many areas in information t...
This paper analyses the Contrastive Divergence algorithm for learning statistical parameters. We rel...
Villmann T, Haase S, Schleif F-M, Hammer B, Biehl M. The Mathematics of Divergence Based Online Lear...
The similarity of feature representations plays a pivotal role in the success of problems related to...
Prototype-based classification, identifying representatives of the data and suitable measures of dis...
We consider in this article median variants of the learning vector quantization classi-fier for clas...
We discuss the use of divergences in dissimilarity-based classification. Divergences can be employed...
Mwebaze E, Schneider P, Schleif F-M, et al. Divergence based classification in Learning Vector Quant...
Mwebaze E, Schneider P, Schleif F-M, Haase S, Villmann T, Biehl M. Divergence based Learning Vector ...
We propose the utilization of divergences in gradient descent learning of supervised and unsupervise...
Villmann T, Haase S, Schleif F-M, Hammer B. Divergence Based Online Learning in Vector Quantization....
Functional Bregman divergences are an important class of divergences in machine learning that genera...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
Nebel D, Hammer B, Frohberg K, Villmann T. Median variants of learning vector quantization for learn...
Dit proefschrift geeft een systematische analyse van op divergentie gebaseerde leer algoritmen en le...
abstract: Divergence functions are both highly useful and fundamental to many areas in information t...
This paper analyses the Contrastive Divergence algorithm for learning statistical parameters. We rel...
Villmann T, Haase S, Schleif F-M, Hammer B, Biehl M. The Mathematics of Divergence Based Online Lear...
The similarity of feature representations plays a pivotal role in the success of problems related to...
Prototype-based classification, identifying representatives of the data and suitable measures of dis...
We consider in this article median variants of the learning vector quantization classi-fier for clas...