| Article ID | Journal | Published Year | Pages | File Type | 
|---|---|---|---|---|
| 508454 | Computers & Geosciences | 2007 | 8 Pages | 
Abstract
												In this study, we present the visualization and clustering capabilities of self-organizing maps (SOM) for analyzing high-dimensional data. We used SOM because they implement an orderly mapping of a high-dimensional distribution onto a regular low-dimensional grid. We used surface texture parameters of volcanic ash that arose from different fragmentation mechanisms as input data. We found that SOM cluster 13-dimensional data more accurately than conventional statistical classifiers. The component planes constructed by SOM are more successful than statistical tests in determining the distinctive parameters.
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											Authors
												Orkun Ersoy, Erkan Aydar, Alain Gourgaud, Harun Artuner, Hasan Bayhan, 
											