Tensor graph convolutional neural network

نویسندگان

  • Tong Zhang
  • Wenming Zheng
  • Zhen Cui
  • Yang Li the Department of Information Science
  • Engineering
  • Southeast University
  • Nanjing
  • China the Key Laboratory of Child Development
  • Learning Science of Ministry of Education
  • Research Center for Learning Science
  • China the School of Computer Science
  • Nanjing University of Science
  • Technology
  • China
چکیده

In this paper, we propose a novel tensor graph convolutional neural network (TGCNN) to conduct convolution on factorizable graphs, for which here two types of problems are focused, one is sequential dynamic graphs and the other is cross-attribute graphs. Especially, we propose a graph preserving layer to memorize salient nodes of those factorized subgraphs, i.e. cross graph convolution and graph pooling. For cross graph convolution, a parameterized Kronecker sum operation is proposed to generate a conjunctive adjacency matrix characterizing the relationship between every pair of nodes across two subgraphs. Taking this operation, then general graph convolution may be efficiently performed followed by the composition of small matrices, which thus reduces high memory and computational burden. Encapsuling sequence graphs into a recursive learning, the dynamics of graphs can be efficiently encoded as well as the spatial layout of graphs. To validate the proposed TGCNN, experiments are conducted on skeleton action datasets as well as matrix completion dataset. The experiment results demonstrate that our method can achieve more competitive performance with the state-of-the-art methods.

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تاریخ انتشار 2018