Results of neural network learning are always subject to some variability, due to the sensitivity to initial conditions, to convergence to local minima, and, sometimes more dramatically, to sampling variability. This paper presents a set of tools designed to assess the reliability of the results of self-organizing maps (SOM), i.e. to test on a statistical basis the confidence we can have on the result of a specific SOM. The tools concern the quantization error in a SOM, and the neighborhood relations (both at the level of a specific pair of observations and globally on the map). As a by-product, these measures also allow to assess the adequacy of the number of units chosen in a map. The tools may also be used to measure objectively how the ...
Self-organizing maps (SOM) are among the more popular neural network models first studied by Teuvo K...
The self-organizing map (SOM) is a type of artificial neural network that has applications in a vari...
The performance of resultant topological structure of Kohonen Self Organizing Map SOM is highly depe...
A la suite de la conférence ESANN 2000International audienceResults of neural network learning are a...
Making results reliable is one of the major concerns in artificial neural networks research. It is o...
Currently, only computationally complex, probabilistic models for convergence exist for self-organiz...
. In exploratory analysis of high-dimensional data the selforganizing map can be used to illustrate ...
Abstract. The Self-Organizing Map, SOM, is a widely used tool in exploratory data analysis. A theore...
The self-organizing map (SOM) is a nonlinear unsupervised method for vector quantization. In the con...
Self-organizing maps are artificial neural networks designed for unsupervised machine learning. Here...
We focus on an ensemble of graphical and statistical tools which represent the state of the art to a...
Analysis of methods for optimizing algorithms of functioning of the Kohonen neural networks, self-or...
Abstract. Self-Organizing Maps have a wide range of beneficial properties for data mining, like vect...
A self-organizing map (SOM) is a type of artificial neural network that has applications in a variet...
This research investigates the efficiency of number of neurons used in self-organizing mapping, one ...
Self-organizing maps (SOM) are among the more popular neural network models first studied by Teuvo K...
The self-organizing map (SOM) is a type of artificial neural network that has applications in a vari...
The performance of resultant topological structure of Kohonen Self Organizing Map SOM is highly depe...
A la suite de la conférence ESANN 2000International audienceResults of neural network learning are a...
Making results reliable is one of the major concerns in artificial neural networks research. It is o...
Currently, only computationally complex, probabilistic models for convergence exist for self-organiz...
. In exploratory analysis of high-dimensional data the selforganizing map can be used to illustrate ...
Abstract. The Self-Organizing Map, SOM, is a widely used tool in exploratory data analysis. A theore...
The self-organizing map (SOM) is a nonlinear unsupervised method for vector quantization. In the con...
Self-organizing maps are artificial neural networks designed for unsupervised machine learning. Here...
We focus on an ensemble of graphical and statistical tools which represent the state of the art to a...
Analysis of methods for optimizing algorithms of functioning of the Kohonen neural networks, self-or...
Abstract. Self-Organizing Maps have a wide range of beneficial properties for data mining, like vect...
A self-organizing map (SOM) is a type of artificial neural network that has applications in a variet...
This research investigates the efficiency of number of neurons used in self-organizing mapping, one ...
Self-organizing maps (SOM) are among the more popular neural network models first studied by Teuvo K...
The self-organizing map (SOM) is a type of artificial neural network that has applications in a vari...
The performance of resultant topological structure of Kohonen Self Organizing Map SOM is highly depe...