In the present paper we investigate the application of differentiable kernel for generalized matrix learning vector quantization as an alternative kernel-based classifier, which additionally provides classification dependent data visualization. We show that the concept of differentiable kernels allows a prototype description in the data space but equipped with the kernel metric. Moreover, using the visualization properties of the original matrix learning vector quantization we are able to optimize the class visualization by inherent visualization mapping learning also in this new kernel-metric data space
Schneider P, Schleif F-M, Villmann T, Biehl M. Generalized Matrix Learning Vector Quantizer for the ...
We propose and investigate a modification of Generalized Matrix Relevance Learning Vector Quantizati...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
In the present paper we investigate the application of differentiable kernel for generalized matrix ...
We derive a novel derivative based version of kernelized Generalized Learning Vector Quantization (K...
Supervised and unsupervised prototype based vector quantization frequently are pro-ceeded in the Euc...
We propose a new matrix learning scheme to extend Generalized Relevance Learning Vector Quantization...
Schleif F-M, Villmann T, Hammer B, Schneider P, Biehl M. Generalized derivative based Kernelized lea...
We present an extension of the recently introduced Generalized Matrix Learning Vector Quantization a...
Discriminative vector quantization schemes such as learning vector quantization (LVQ) and extensions...
Learning vector quantization (LVQ) is one of the most powerful approaches for prototype based classi...
International audienceThe kernel trick is a well known approach allowing to implicitly cast a linear...
Schneider P, Schleif F-M, Villmann T, Biehl M. Generalized Matrix Learning Vector Quantizer for the ...
We propose and investigate a modification of Generalized Matrix Relevance Learning Vector Quantizati...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
In the present paper we investigate the application of differentiable kernel for generalized matrix ...
We derive a novel derivative based version of kernelized Generalized Learning Vector Quantization (K...
Supervised and unsupervised prototype based vector quantization frequently are pro-ceeded in the Euc...
We propose a new matrix learning scheme to extend Generalized Relevance Learning Vector Quantization...
Schleif F-M, Villmann T, Hammer B, Schneider P, Biehl M. Generalized derivative based Kernelized lea...
We present an extension of the recently introduced Generalized Matrix Learning Vector Quantization a...
Discriminative vector quantization schemes such as learning vector quantization (LVQ) and extensions...
Learning vector quantization (LVQ) is one of the most powerful approaches for prototype based classi...
International audienceThe kernel trick is a well known approach allowing to implicitly cast a linear...
Schneider P, Schleif F-M, Villmann T, Biehl M. Generalized Matrix Learning Vector Quantizer for the ...
We propose and investigate a modification of Generalized Matrix Relevance Learning Vector Quantizati...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...