Learning Smooth Representation for Multi-view Subspace Clustering
- Publisher:
- ACM
- Publication Type:
- Conference Proceeding
- Citation:
- MM 2022 - Proceedings of the 30th ACM International Conference on Multimedia, 2022, pp. 3421-3429
- Issue Date:
- 2022-10-10
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| Filename | Description | Size | |||
|---|---|---|---|---|---|
| Learning Smooth Representation for Multi-view Subspace Clustering.pdf | Published version | 1.88 MB |
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Multi-view subspace clustering aims to exploit data correlation consensus among multiple views, which essentially can be treated as graph-based approach. However, existing methods usually suffer from suboptimal solution as the raw data might not be separable into subspaces. In this paper, we propose to achieve a smooth representation for each view and thus facilitate the downstream clustering task. It is based on a assumption that a graph signal is smooth if nearby nodes on the graph have similar features representations. Specifically, our mode is able to retain the graph geometric features by applying a low-pass filter to extract the smooth representations of multiple views. Besides, our method achieves the smooth representation learning as well as multi-view clustering interactively in a unified framework, hence it is an end-to-end single-stage learning problem. Substantial experiments on benchmark multi-view datasets are performed to validate the effectiveness of the proposed method, compared to the state-of-the-arts over the clustering performance.
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