somQuality | R Documentation |
Computes several quality measures on a trained SOM (see Details).
somQuality(som, traindat)
som |
|
traindat |
matrix containing the training data. |
Four measures of SOM quality are returned :
Average squared distance between the data points and the map's prototypes to which they are mapped. Lower is better.
Similar to other clustering methods, the share of total variance that is explained by the clustering (equal to 1 minus the ratio of quantization error to total variance). Higher is better.
Measures how well the topographic structure of the data is preserved on the map. It is computed as the share of observations for which the best-matching node is not a neighbor of the second-best matching node on the map. Lower is better: 0 indicates excellent topographic representation (all best and second-best matching nodes are neighbors), 1 is the maximum error (best and second-best nodes are never neighbors).
Combines aspects of the quantization and topographic error. It is the sum of the mean distance between points and their best-matching prototypes, and of the mean geodesic distance (pairwise prototype distances following the SOM grid) between the points and their second-best matching prototype.
A list
containing quality measures : quantization error, share
of explained variance, topographic error and Kaski-Lagus error (see
Details).
Kohonen T. (2001) Self-Organizing Maps, 3rd edition, Springer Press, Berlin. <doi:10.1007/978-3-642-56927-2>
Kaski, S. and Lagus, K. (1996) Comparing Self-Organizing Maps. In C. von der Malsburg, W. von Seelen, J. C. Vorbruggen, and B. Sendho (Eds.) Proceedings of ICANN96, International Conference on Articial Neural Networks , Lecture Notes in Computer Science vol. 1112, pp. 809-814. Springer, Berlin. <doi:10.1007/3-540-61510-5_136>
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