Abstract. In this article we extend the (recently published) unsupervised information theoretic vector quantization approach based on the Cauchy–Schwarz-divergence for matching data and prototype densities to supervised learning and classification. In particular, first we generalize the unsupervised method to more general metrics instead of the Euclidean, as it was used in the original algorithm. Thereafter, we extend the model to a supervised learning method resulting in a fuzzy classification algorithm. Thereby, we allow fuzzy labels for both, data and prototypes. Finally, we transfer the idea of relevance learning for metric adaptation known from learning vector quantization to the new approach.
We propose a new matrix learning scheme to extend relevance learning vector quantization (RLVQ), an ...
In this paper we propose a simple yet powerful method for learning representations in supervised lea...
The paper deals with the concept of relevance learning in learning vector quantization
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
Villmann T, Hammer B, Schleif F-M, Geweniger T, Fischer T, Cottrell M. Prototype based classificatio...
An overview is given of prototype-based models in machine learning. In this framework, observations,...
In this paper, a new competition strategy for learning vector quantization is proposed. The simple c...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
In this chapter, one of themost popular and intuitive prototype-based classification algorithms, lea...
This thesis deals with the integration of auxiliary data knowledge into machine learning methods esp...
Villmann T, Hammer B, Schleif F-M, Hermann W, Cottrell M. Fuzzy Classification Using Information The...
The amount of digital data increases every year dramatically. The processing of these data requires ...
... theoretic classification (ITC) is introduced. Its principle relies on the likelihood of a data s...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
We propose a new matrix learning scheme to extend relevance learning vector quantization (RLVQ), an ...
In this paper we propose a simple yet powerful method for learning representations in supervised lea...
The paper deals with the concept of relevance learning in learning vector quantization
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
Villmann T, Hammer B, Schleif F-M, Geweniger T, Fischer T, Cottrell M. Prototype based classificatio...
An overview is given of prototype-based models in machine learning. In this framework, observations,...
In this paper, a new competition strategy for learning vector quantization is proposed. The simple c...
We propose relevance learning for unsupervised online vector quantization algorithm based on stochas...
In this chapter, one of themost popular and intuitive prototype-based classification algorithms, lea...
This thesis deals with the integration of auxiliary data knowledge into machine learning methods esp...
Villmann T, Hammer B, Schleif F-M, Hermann W, Cottrell M. Fuzzy Classification Using Information The...
The amount of digital data increases every year dramatically. The processing of these data requires ...
... theoretic classification (ITC) is introduced. Its principle relies on the likelihood of a data s...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
We propose a new matrix learning scheme to extend relevance learning vector quantization (RLVQ), an ...
In this paper we propose a simple yet powerful method for learning representations in supervised lea...
The paper deals with the concept of relevance learning in learning vector quantization