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Kernel Truncated Regression Representation for Robust Subspace Clustering
[article]
2020
arXiv
pre-print
Subspace clustering aims to group data points into multiple clusters of which each corresponds to one subspace. Most existing subspace clustering approaches assume that input data lie on linear subspaces. In practice, however, this assumption usually does not hold. To achieve nonlinear subspace clustering, we propose a novel method, called kernel truncated regression representation. Our method consists of the following four steps: 1) projecting the input data into a hidden space, where each
arXiv:1705.05108v3
fatcat:obqzayltmbco3esxpx737syvg4