Dynamic Hypergraph Structure Learning

@inproceedings{Zhang2018DynamicHS,
  title={Dynamic Hypergraph Structure Learning},
  author={Zizhao Zhang and Haojie Lin and Yue Gao},
  booktitle={IJCAI},
  year={2018}
}
In recent years, hypergraph modeling has shown its superiority on correlation formulation among samples and has wide applications in classification, retrieval, and other tasks. In all these works, the performance of hypergraph learning highly depends on the generated hypergraph structure. A good hypergraph structure can represent the data correlation better, and vice versa. Although hypergraph learning has attracted much attention recently, most of existing works still rely on a static… CONTINUE READING

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