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Joint Learning of Feature and Topology for Multi-view Graph Convolutional Network

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Joint Learning of Feature and Topology for Multi-view Graph Convolutional Network

Yuhong Chen, Zhihao Wu, Zhaoliang Chen, Mianxiong Dong and Shiping Wang. Joint Learning of Feature and Topology for Multi-view Graph Convolutional Network. *Neural Networks*.

Method framework

image-20230715194946257

We design a multi-view autoencoder to approximate matrix decomposition, which integrates the consistency of multi-view data. Simultaneously, the k-Nearest Neighbor (kNN) and k-Farthest Neighbor (kFN) strategies are utilized to calculate a more accurate set of topology matrices from two perspectives. Then JFGCN dynamically adjust it by using a flexible graph convolution to learn a robust connective pattern.

Requirements

  • Python 3.9
  • Pytorch 1.12.1

Usage

python train.py

Reference

@article{chen2023joint,
  title={Joint learning of feature and topology for multi-view graph convolutional network},
  author={Chen, Yuhong and Wu, Zhihao and Chen, Zhaoliang and Dong, Mianxiong and Wang, Shiping},
  journal={Neural Networks},
  volume={168},
  pages={161--170},
  year={2023}
}

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