Arbitrary-Order Proximity Preserved Network Embedding

@inproceedings{Zhang2018ArbitraryOrderPP,
  title={Arbitrary-Order Proximity Preserved Network Embedding},
  author={Ziwei Zhang and Peng Cui and Xiao Wang and Jian Pei and Xuanrong Yao and Wenwu Zhu},
  booktitle={KDD},
  year={2018}
}
Network embedding has received increasing research attention in recent years. The existing methods show that the high-order proximity plays a key role in capturing the underlying structure of the network. However, two fundamental problems in preserving the high-order proximity remain unsolved. First, all the existing methods can only preserve fixed-order proximities, despite that proximities of different orders are often desired for distinct networks and target applications. Second, given a… CONTINUE READING

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