Multi-Source Multi-View Clustering via Discrepancy Penalty
April 14, 2016 ยท Declared Dead ยท ๐ IEEE International Joint Conference on Neural Network
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Authors
Weixiang Shao, Jiawei Zhang, Lifang He, Philip S. Yu
arXiv ID
1604.04029
Category
cs.LG: Machine Learning
Citations
18
Venue
IEEE International Joint Conference on Neural Network
Last Checked
3 months ago
Abstract
With the advance of technology, entities can be observed in multiple views. Multiple views containing different types of features can be used for clustering. Although multi-view clustering has been successfully applied in many applications, the previous methods usually assume the complete instance mapping between different views. In many real-world applications, information can be gathered from multiple sources, while each source can contain multiple views, which are more cohesive for learning. The views under the same source are usually fully mapped, but they can be very heterogeneous. Moreover, the mappings between different sources are usually incomplete and partially observed, which makes it more difficult to integrate all the views across different sources. In this paper, we propose MMC (Multi-source Multi-view Clustering), which is a framework based on collective spectral clustering with a discrepancy penalty across sources, to tackle these challenges. MMC has several advantages compared with other existing methods. First, MMC can deal with incomplete mapping between sources. Second, it considers the disagreements between sources while treating views in the same source as a cohesive set. Third, MMC also tries to infer the instance similarities across sources to enhance the clustering performance. Extensive experiments conducted on real-world data demonstrate the effectiveness of the proposed approach.
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