Subspace clustering without knowing the number of clusters: A parameter free approach

10 Sep 2019Vishnu MenonGokularam MSheetal Kalyani

Subspace clustering, the task of clustering high dimensional data when the data points come from a union of subspaces is one of the fundamental tasks in unsupervised machine learning. Most of the existing algorithms for this task require prior knowledge of the number of clusters along with few additional parameters which need to be set or tuned apriori according to the type of data to be clustered... (read more)

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