flexclust
Flexible Cluster Algorithms
The main function `kcca` implements a general framework for k-centroids cluster analysis supporting arbitrary distance measures and centroid computation. Further cluster methods include hard competitive learning, neural gas, and QT clustering. There are numerous visualization methods for cluster results (neighborhood graphs, convex cluster hulls, barcharts of centroids, ...), and bootstrap methods for the analysis of cluster stability.
- Version1.4-2
- R version≥ 2.14.0 graphics
- LicenseGPL-2
- Needs compilation?Yes
- flexclust citation info
- Last release04/27/2024
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Team
Bettina Grün
Friedrich Leisch
Evgenia Dimitriadou
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- Depends2 packages
- Imports1 package
- Suggests5 packages
- Reverse Depends4 packages
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