Kaestner M, Hammer B, Biehl M, Villmann T. Functional relevance learning in generalized learning vector quantization. Neurocomputing. 2012;90:85-95.Relevance learning in learning vector quantization is a central paradigm for classification task depending feature weighting and selection. We propose a functional approach to relevance learning for high-dimensional functional data. For this purpose we compose the relevance profile by a superposition of only a few parametrized basis functions taking into account the functional character of the data. The number of these parameters is usually significantly smaller than the number of relevance weights in standard relevance learning, which is the number of data dimensions. Thus, instabilities in lea...
We propose a new matrix learning scheme to extend Generalized Relevance Learning Vector Quantization...
Hammer B, Villmann T, Schleif F-M, Albani C, Hermann W. Learning vector quantization classification ...
In some classification problems the distribution of the test data is different from that of the trai...
Relevance learning in learning vector quantization is a central paradigm for classification task dep...
We propose a functional approach to relevance learning and matrix adaptation for learning vector qua...
Kaestner M, Hammer B, Biehl M, Villmann T. Generalized Functional Relevance Learning Vector Quantiza...
We present a framework for distance-based classification of functional data. We consider the analysi...
Hammer B, Villmann T. Generalized Relevance Learning Vector Quantization. Neural Networks. 2002;15(8...
We present a framework for distance-based classification of functional data. We consider the analysi...
We propose a new matrix learning scheme to extend relevance learning vector quantization (RLVQ), an ...
Abstract. We propose in this contribution a method for l1-regularization in prototype based relevanc...
Abstract. We propose a method to automatically determine the rel-evance of the input dimensions of a...
Schneider P, Biehl M, Hammer B. Adaptive relevance matrices in learning vector quantization. Neural ...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
We propose a new matrix learning scheme to extend Generalized Relevance Learning Vector Quantization...
Hammer B, Villmann T, Schleif F-M, Albani C, Hermann W. Learning vector quantization classification ...
In some classification problems the distribution of the test data is different from that of the trai...
Relevance learning in learning vector quantization is a central paradigm for classification task dep...
We propose a functional approach to relevance learning and matrix adaptation for learning vector qua...
Kaestner M, Hammer B, Biehl M, Villmann T. Generalized Functional Relevance Learning Vector Quantiza...
We present a framework for distance-based classification of functional data. We consider the analysi...
Hammer B, Villmann T. Generalized Relevance Learning Vector Quantization. Neural Networks. 2002;15(8...
We present a framework for distance-based classification of functional data. We consider the analysi...
We propose a new matrix learning scheme to extend relevance learning vector quantization (RLVQ), an ...
Abstract. We propose in this contribution a method for l1-regularization in prototype based relevanc...
Abstract. We propose a method to automatically determine the rel-evance of the input dimensions of a...
Schneider P, Biehl M, Hammer B. Adaptive relevance matrices in learning vector quantization. Neural ...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
We propose a new matrix learning scheme to extend Generalized Relevance Learning Vector Quantization...
Hammer B, Villmann T, Schleif F-M, Albani C, Hermann W. Learning vector quantization classification ...
In some classification problems the distribution of the test data is different from that of the trai...