KMC/EDAM: A New Approach for the Visualization of K-Means Clustering Results

نویسندگان

  • Nils Raabe
  • Karsten Luebke
  • Claus Weihs
چکیده

In this work we introduce a method for classification and visualization. In contrast to simultaneous methods like e.g. Kohonen SOM this new approach, called KMC/EDAM, runs through two stages. In the first stage the data is clustered by classical methods like K-means clustering. In the second stage the centroids of the obtained clusters are visualized in a fixed target space which is directly comparable to that of SOM.

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تاریخ انتشار 2004