Interactive Unsupervised Clustering with Clustervision
نویسندگان
چکیده
Figure 1: An overview of Clustervision on a dataset describing 403 paintings by the “Joy of Painting” artist Bob Ross. (A) Ranked List of Clustering Results shows 16 different clustering results that are sorted by the aggregated quality measures; (B) Projection shows a selected clustering result (highlighted in yellow in (A)) on a projection of data points colored corresponding to corresponding clusters; (C) Parallel Trends show the trends of feature values of data points within corresponding clusters in areas across parallel coordinates. Cluster 1 (Green Color) is highlighted; (D) Cluster Detail shows quality measures of a selected individual cluster (Cluster 1); (E) Data Point shows the feature value distribution of the selected cluster as well as the selected data point (Data Point 372 within Cluster 1).
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