Title of article
Improvements on the visualization of clusters in geo-referenced data using Self-Organizing Maps
Author/Authors
Gorricha، نويسنده , , Jorge and Lobo، نويسنده , , Victor، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
10
From page
177
To page
186
Abstract
The Self-Organizing Map (SOM) is an artificial neural network that performs simultaneously vector quantization and vector projection. Due to this characteristic, the SOM can be visualized through the output space, i.e. considering the vector projection perspective, and through the input data space, emphasizing the vector quantization process. Among all the strategies for visualizing the SOM, we will focus in those that allow dealing with spatial dependency, generally present in geo-referenced data. In this paper a method is presented for spatial clustering that integrates the visualization of both perspectives of a SOM: linking its output space, defined in up to three dimensions (3D), to the cartographic representation through a ordered set of colors; and exploring the use of border lines among geo-referenced elements, computed according to the distances in the input data space between their Best Matching Units. The promising results presented in this paper, focused on ecological modeling, urban modeling and climate analysis, show that the proposed method is a valuable tool for addressing a wide range of problems within the geosciences, especially when it is necessary to visualize high dimensional geo-referenced data.
Keywords
Visualization , Clustering , self-organizing maps , Spatial clustering , 3D SOM
Journal title
Computers & Geosciences
Serial Year
2012
Journal title
Computers & Geosciences
Record number
2288628
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