2005
DOI: 10.1007/11427445_13
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Advanced Visualization Techniques for Self-organizing Maps with Graph-Based Methods

Abstract: Abstract-Self-Organizing Maps are a prominent tool for exploratory data analysis. In this paper, we propose a method of visualizing the cluster structure of the SOM based on the similarity of areas on the map, computed by aggregation of the distances of the underlying component planes of the codebook. The result can then be plotted on top of the map lattice with arrows that point to the closest cluster center, which is analogous to flow and vector field visualizations. A parameter is provided that allows fine-… Show more

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Cited by 16 publications
(5 citation statements)
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“…73 Examples of aids for assessing distance structures are Sammon's mapping, the Unified distance matrix (U-matrix), 74 and cluster connections. 75 Moreover, some methods attempt to account for both structures and densities, such as the U*-matrix, 76 the sky metaphor visualization, 77 the neighborhood graph, 78 and smoothed data histograms. 79 The second group consists of visualizations that enhance the representation of multidimensional information.…”
Section: Illustrative Experimentsmentioning
confidence: 99%
“…73 Examples of aids for assessing distance structures are Sammon's mapping, the Unified distance matrix (U-matrix), 74 and cluster connections. 75 Moreover, some methods attempt to account for both structures and densities, such as the U*-matrix, 76 the sky metaphor visualization, 77 the neighborhood graph, 78 and smoothed data histograms. 79 The second group consists of visualizations that enhance the representation of multidimensional information.…”
Section: Illustrative Experimentsmentioning
confidence: 99%
“…A simple way to explain this algorithm is to understand the output neurons, represented by the weights ij w computed in the SOM algorithm, as a set of nodes of a fully connected graph (Cormen et al 2001;Pölzlbauer, Rauber, Dittenbach, 2005;Mayer, Rauber, 2010 ) in the parameter space. Each edge in this graph has a cost given by the Euclidean distance between its ends.…”
Section: A Self-organized Manifold Mapping Algorithmmentioning
confidence: 99%
“…Vector Activity Histogram, Class Visualization [15], Component Planes [27], Vector Fields [20], Hit Histogram, Metro Map [17], Minimum Spanning Tree, Neighborhood Graph [21], Smoothed Data Histograms [19], Sky Metaphor Visualization [14], U-Matrix [26], D-Matrix, P-Matrix [24] and U * -Matrix [25]. Furthermore as an additional task we have to take the extra information of Web 2.0 entries into consideration throughout the document processing phase.…”
Section: The Proposed Approachmentioning
confidence: 99%