Publication | Open Access
Clusterpath: an algorithm for clustering using convex fusion penalties
204
Citations
18
References
2011
Year
Unknown Venue
We present a new clustering algorithm by proposing a convex relaxation of hierarchical clustering, which results in a family of objective functions with a natural geometric interpretation. We give efficient algorithms for calculating the continuous regularization path of solutions, and discuss relative advantages of the parameters. Our method experimentally gives state-of-the-art results similar to spectral clustering for non-convex clusters, and has the added benefit of learning a tree structure from the data. Contents 1
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