Partial Multi-View Clustering

  title={Partial Multi-View Clustering},
  author={Shao-Yuan Li and Yuan Jiang and Zhi-Hua Zhou},
Real data are often with multiple modalities or coming from multiple channels, while multi-view clustering provides a natural formulation for generating clusters from such data. Previous studies assumed that each example appears in all views, or at least there is one view containing all examples. In real tasks, however, it is often the case that every view suffers from the missing of some data and therefore results in many partial examples, i.e., examples with some views missing. In this paper… CONTINUE READING
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