February 27, 2007Stanford1 Generalized Single Linkage Clustering Werner Stuetzle Rebecca Nugent Department of Statistics University of Washington.

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Presentation transcript:

February 27, 2007Stanford1 Generalized Single Linkage Clustering Werner Stuetzle Rebecca Nugent Department of Statistics University of Washington

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February 27, 2007Stanford4 Groups K-means with k = 2

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February 27, 2007Stanford6 Detect that there are 5 or 6 distinct groups. Assign group labels to observations.

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