Abstract. In the paper, two combinations (consecutive and integrated) of vector quantization methods (self-orga-nizing map and neural gas) and multidimensional scaling (MDS) have been investigated and compared. The vector quantization is used to reduce the number of dataset items. The dataset with a smaller number of items is analyzed by multidimensional scaling in order to reduce the number of features of data (dimensionality of space) and to map them onto the plane, i.e., to visualize. Some ways of the initialization (at random, on a line, by PCs and by variances) of two-dimensional vectors in MDS have been investigated. Two ways of assignment of two-dimensional vectors in the integ-rated combinations of MDS and vector quantization method...
Villmann T, Hammer B. Supervised Neural Gas for Learning Vector Quantization. In: Polani D, Kim J, M...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
A review of recent development of the self-organising map (SOM) for applications related to data map...
In this paper, we present a comparative analysis of a combination of two vector quantization methods...
In this paper, the quality of mapping vectors, obtained by vector quantization methods (self-organiz...
In the paper, we discuss the visualization of multidimensional vectors taking into account the learn...
In this paper the basic principles and developments of an unsupervised learning algorithm, the Self-...
The self-organizing map (SOM) and some of its variants such as visualization induced SOM (ViSOM) hav...
Villmann T, Schleif F-M, Hammer B. Supervised Neural Gas and Relevance Learning in Learning Vector Q...
: A new method of a vector quantization in multidimensional space is presented. The method combines ...
A cross-entropy approach to mapping high-dimensional data into a low-dimensional space embedding is ...
Self-Organizing Maps(SOMs) consist of a set of neurons arranged in such a way that there are neighb...
Bojer T, Hammer B, Strickert M, Villmann T. Determining Relevant Input Dimensions for the Self-Organ...
We consider different ways to control the magnification in self-organizing maps (SOM) and neural gas...
Abstract—We present a new strategy called “curvilinear com-ponent analysis ” (CCA) for dimensionalit...
Villmann T, Hammer B. Supervised Neural Gas for Learning Vector Quantization. In: Polani D, Kim J, M...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
A review of recent development of the self-organising map (SOM) for applications related to data map...
In this paper, we present a comparative analysis of a combination of two vector quantization methods...
In this paper, the quality of mapping vectors, obtained by vector quantization methods (self-organiz...
In the paper, we discuss the visualization of multidimensional vectors taking into account the learn...
In this paper the basic principles and developments of an unsupervised learning algorithm, the Self-...
The self-organizing map (SOM) and some of its variants such as visualization induced SOM (ViSOM) hav...
Villmann T, Schleif F-M, Hammer B. Supervised Neural Gas and Relevance Learning in Learning Vector Q...
: A new method of a vector quantization in multidimensional space is presented. The method combines ...
A cross-entropy approach to mapping high-dimensional data into a low-dimensional space embedding is ...
Self-Organizing Maps(SOMs) consist of a set of neurons arranged in such a way that there are neighb...
Bojer T, Hammer B, Strickert M, Villmann T. Determining Relevant Input Dimensions for the Self-Organ...
We consider different ways to control the magnification in self-organizing maps (SOM) and neural gas...
Abstract—We present a new strategy called “curvilinear com-ponent analysis ” (CCA) for dimensionalit...
Villmann T, Hammer B. Supervised Neural Gas for Learning Vector Quantization. In: Polani D, Kim J, M...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
A review of recent development of the self-organising map (SOM) for applications related to data map...