In this paper we propose a rank measure for comparison of (dis-)similarities regarding their behavior to reflect data dependencies. It is based on evaluation of dissimilarity ranks, which reflects the topological structure of the data in dependence of the dissimilarity measure. The introduced rank measure can be used to select dissimilarity measures in advance before cluster or classification learning algorithms are applied. Thus time consuming learning of models with different dissimilarities can be avoided.</p
Nebel D, Hammer B, Frohberg K, Villmann T. Median variants of learning vector quantization for learn...
We introduce the δ-machine, a statistical learning tool for classification based on (dis)similaritie...
ISBN : 978-1-59904-849-9 ; 11 pagesAdaptation of the Self-Organizing Map to dissimilarity data is of...
In this paper we propose a rank measure for comparison of (dis-)similarities regarding their behavio...
The amount of digital data increases every year dramatically. The processing of these data requires ...
The amount of digital data increases every year dramatically. The processing of these data requires ...
An overview is given of prototype-based models in machine learning. In this framework, observations,...
Existing distance metric learning methods require optimisation to learn a feature space to transform...
Due to the tremendous increase of electronic information with respect to the size of data sets as we...
Mokbel B, Paaßen B, Hammer B. Efficient Adaptation of Structure Metrics in Prototype-Based Classific...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
Nebel D, Hammer B, Frohberg K, Villmann T. Median variants of learning vector quantization for learn...
We introduce the δ-machine, a statistical learning tool for classification based on (dis)similaritie...
ISBN : 978-1-59904-849-9 ; 11 pagesAdaptation of the Self-Organizing Map to dissimilarity data is of...
In this paper we propose a rank measure for comparison of (dis-)similarities regarding their behavio...
The amount of digital data increases every year dramatically. The processing of these data requires ...
The amount of digital data increases every year dramatically. The processing of these data requires ...
An overview is given of prototype-based models in machine learning. In this framework, observations,...
Existing distance metric learning methods require optimisation to learn a feature space to transform...
Due to the tremendous increase of electronic information with respect to the size of data sets as we...
Mokbel B, Paaßen B, Hammer B. Efficient Adaptation of Structure Metrics in Prototype-Based Classific...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
An introduction is given to the use of prototype-based models in supervised machine learning. The ma...
Nebel D, Hammer B, Frohberg K, Villmann T. Median variants of learning vector quantization for learn...
We introduce the δ-machine, a statistical learning tool for classification based on (dis)similaritie...
ISBN : 978-1-59904-849-9 ; 11 pagesAdaptation of the Self-Organizing Map to dissimilarity data is of...