Visualisation techniques focus on reducing high dimensional data to a low dimensional surface or a cube. Similar dimensional reduction is attempted in the socalled `self-organising maps'. A number of techniques have been developed to visualise categories learnt by these maps through and exemplified by the term sequential clustering. An evaluation of the techniques is presented using the learning capability of the selforganising maps as a baseline for building systems that learn to visualise complex data
Often in the context of multidimensional data, there is a need to analyze the clusters, find similar...
The Self-Organizing Map (SOM) is one of the artificial neural networks that perform vector quantizat...
”We are drowning in information, but starving for knowledge. ” [John Naisbett] The objective of expl...
Visualisation techniques focus on reducing high dimensional data to a low dimensional surface or a c...
Visualisation techniques focus on reducing high dimensional data to a low dimensional surface or a c...
A review of recent development of the self-organising map (SOM) for applications related to data map...
: We describe an extension to the self-organizing map learning rule enabeling a straight-forward vis...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
We will show that the number of output units used in a self-organizing map (SOM) influences its appl...
Presents a technique that may be used for clustering in a very high dimensionality pattern space. Th...
International audienceA. Nu/spl uml/rnberger (2001) has proposed a modification of the standard lear...
In the article, an additional visualization of self-organizing maps (SOM) has been investigated. The...
. The Self-Organizing Map (SOM) can be used for forming overviews of multivariate data sets and for ...
A new learning algorithm is presented for enhancing the scale or structure of an already trained sel...
The Self-Organizing Map (SOM) is a neural network algorithm, which uses a competitive learning techn...
Often in the context of multidimensional data, there is a need to analyze the clusters, find similar...
The Self-Organizing Map (SOM) is one of the artificial neural networks that perform vector quantizat...
”We are drowning in information, but starving for knowledge. ” [John Naisbett] The objective of expl...
Visualisation techniques focus on reducing high dimensional data to a low dimensional surface or a c...
Visualisation techniques focus on reducing high dimensional data to a low dimensional surface or a c...
A review of recent development of the self-organising map (SOM) for applications related to data map...
: We describe an extension to the self-organizing map learning rule enabeling a straight-forward vis...
Abstract. The Self-Organizing map (SOM), a powerful method for data mining and cluster extraction, i...
We will show that the number of output units used in a self-organizing map (SOM) influences its appl...
Presents a technique that may be used for clustering in a very high dimensionality pattern space. Th...
International audienceA. Nu/spl uml/rnberger (2001) has proposed a modification of the standard lear...
In the article, an additional visualization of self-organizing maps (SOM) has been investigated. The...
. The Self-Organizing Map (SOM) can be used for forming overviews of multivariate data sets and for ...
A new learning algorithm is presented for enhancing the scale or structure of an already trained sel...
The Self-Organizing Map (SOM) is a neural network algorithm, which uses a competitive learning techn...
Often in the context of multidimensional data, there is a need to analyze the clusters, find similar...
The Self-Organizing Map (SOM) is one of the artificial neural networks that perform vector quantizat...
”We are drowning in information, but starving for knowledge. ” [John Naisbett] The objective of expl...