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Stochastic Sparse Subspace Clustering

About

State-of-the-art subspace clustering methods are based on self-expressive model, which represents each data point as a linear combination of other data points. By enforcing such representation to be sparse, sparse subspace clustering is guaranteed to produce a subspace-preserving data affinity where two points are connected only if they are from the same subspace. On the other hand, however, data points from the same subspace may not be well-connected, leading to the issue of over-segmentation. We introduce dropout to address the issue of over-segmentation, which is based on randomly dropping out data points in self-expressive model. In particular, we show that dropout is equivalent to adding a squared $\ell_2$ norm regularization on the representation coefficients, therefore induces denser solutions. Then, we reformulate the optimization problem as a consensus problem over a set of small-scale subproblems. This leads to a scalable and flexible sparse subspace clustering approach, termed Stochastic Sparse Subspace Clustering, which can effectively handle large scale datasets. Extensive experiments on synthetic data and real world datasets validate the efficiency and effectiveness of our proposal.

Ying Chen, Chun-Guang Li, Chong You• 2020

Related benchmarks

TaskDatasetResultRank
ClusteringMNIST--
92
Subspace ClusteringYale-B
ACC87.4
21
ClusteringFashion-MNIST 10k raw-pixel
Accuracy56.9
7
ClusteringMNIST 10k raw-pixel
Accuracy62.3
7
ClusteringGTSRB
Accuracy95.54
6
Subspace ClusteringMNIST Scattered
Accuracy0.963
6
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